463 lines
16 KiB
Python
463 lines
16 KiB
Python
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# Copyright 2016 Google Inc. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
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# you may not use this file except in compliance with the License.
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# You may obtain a copy of the License at
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#
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# http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
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# distributed under the License is distributed on an "AS IS" BASIS,
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# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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# See the License for the specific language governing permissions and
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# limitations under the License.
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"""Utility functions for working with lead sheets."""
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import abc
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import copy
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import itertools
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from magenta.music import chords_lib
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from magenta.music import constants
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from magenta.music import events_lib
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from magenta.music import melodies_lib
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from magenta.pipelines import statistics
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from magenta.protobuf import music_pb2
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DEFAULT_STEPS_PER_BAR = constants.DEFAULT_STEPS_PER_BAR
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DEFAULT_STEPS_PER_QUARTER = constants.DEFAULT_STEPS_PER_QUARTER
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# Shortcut to CHORD_SYMBOL annotation type.
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CHORD_SYMBOL = music_pb2.NoteSequence.TextAnnotation.CHORD_SYMBOL
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class MelodyChordsMismatchException(Exception):
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pass
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class LeadSheet(events_lib.EventSequence):
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"""A wrapper around MonophonicMelody and ChordProgression.
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Attributes:
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melody: A MonophonicMelody object, the lead sheet melody.
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chords: A ChordProgression object, the underlying chords.
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"""
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def __init__(self):
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"""Construct an empty LeadSheet."""
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self._reset()
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def _reset(self):
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"""Clear events and reset object state."""
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self._melody = melodies_lib.MonophonicMelody()
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self._chords = chords_lib.ChordProgression()
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def __iter__(self):
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"""Return an iterator over (melody, chord) tuples in this LeadSheet.
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Returns:
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Python iterator over (melody, chord) event tuples.
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"""
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return itertools.izip(self._melody, self._chords)
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def __getitem__(self, i):
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"""Returns the melody-chord tuple at the given index."""
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return self._melody[i], self._chords[i]
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def __getslice__(self, i, j):
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"""Returns the melody-chord tuples in the given slice range."""
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return zip(self._melody[i:j], self._chords[i:j])
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def __len__(self):
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"""How many events (melody-chord tuples) are in this LeadSheet.
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Returns:
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Number of events as an integer.
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"""
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return len(self._melody)
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def __deepcopy__(self, unused_memo=None):
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new_copy = type(self)()
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new_copy.from_melody_and_chords(copy.deepcopy(self._melody),
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copy.deepcopy(self._chords))
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return new_copy
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def __eq__(self, other):
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if not isinstance(other, LeadSheet):
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return False
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return (self._melody == other.melody and
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self._chords == other.chords)
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@property
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def start_step(self):
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return self._melody.start_step
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@property
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def end_step(self):
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return self._melody.end_step
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@property
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def steps_per_bar(self):
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return self._melody.steps_per_bar
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@property
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def steps_per_quarter(self):
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return self._melody.steps_per_quarter
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@property
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def melody(self):
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"""Return the melody of the lead sheet.
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Returns:
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The lead sheet melody, a MonophonicMelody object.
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"""
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return self._melody
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@property
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def chords(self):
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"""Return the chord progression of the lead sheet.
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Returns:
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The lead sheet chords, a ChordProgression object.
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"""
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return self._chords
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def append_event(self, event):
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"""Appends event to the end of the sequence and increments the end step.
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Args:
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event: The event (a melody-chord tuple) to append to the end.
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"""
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melody_event, chord_event = event
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self._melody.append_event(melody_event)
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self._chords.append_event(chord_event)
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def from_event_list(self, events, start_step=0,
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steps_per_bar=DEFAULT_STEPS_PER_BAR,
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steps_per_quarter=DEFAULT_STEPS_PER_QUARTER):
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"""Initializes with a list of event values (melody-chord tuples).
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Args:
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events: List of melody-chord tuples.
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start_step: The integer starting step offset.
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steps_per_bar: The number of steps in a bar.
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steps_per_quarter: The number of steps in a quarter note.
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"""
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melody_events, chord_events = zip(*events)
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self._melody.from_event_list(melody_events, start_step=start_step,
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steps_per_bar=steps_per_bar,
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steps_per_quarter=steps_per_quarter)
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self._chords.from_event_list(chord_events, start_step=start_step,
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steps_per_bar=steps_per_bar,
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steps_per_quarter=steps_per_quarter)
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def from_melody_and_chords(self, melody, chords):
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"""Initializes a LeadSheet with a given melody and chords.
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Args:
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melody: A MonophonicMelody object.
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chords: A ChordProgression object.
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Raises:
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MelodyChordsMismatchException: If the melody and chord progression differ
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in temporal resolution or position in the source sequence.
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"""
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if (len(melody) != len(chords) or
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melody.steps_per_bar != chords.steps_per_bar or
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melody.steps_per_quarter != chords.steps_per_quarter or
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melody.start_step != chords.start_step or
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melody.end_step != chords.end_step):
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raise MelodyChordsMismatchException()
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self._melody = melody
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self._chords = chords
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def to_sequence(self,
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velocity=100,
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instrument=0,
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sequence_start_time=0.0,
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qpm=120.0):
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"""Converts the LeadSheet to NoteSequence proto.
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Args:
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velocity: Midi velocity to give each melody note. Between 1 and 127
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(inclusive).
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instrument: Midi instrument to give each melody note.
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sequence_start_time: A time in seconds (float) that the first note (and
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chord) in the sequence will land on.
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qpm: Quarter notes per minute (float).
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Returns:
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A NoteSequence proto encoding the melody and chords from the lead sheet.
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"""
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sequence = self._melody.to_sequence(
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velocity=velocity, instrument=instrument,
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sequence_start_time=sequence_start_time, qpm=qpm)
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chord_sequence = self._chords.to_sequence(
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sequence_start_time=sequence_start_time, qpm=qpm)
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# A little ugly, but just add the chord annotations to the melody sequence.
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for text_annotation in chord_sequence.text_annotations:
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if text_annotation.annotation_type == CHORD_SYMBOL:
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chord = sequence.text_annotations.add()
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chord.CopyFrom(text_annotation)
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return sequence
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def transpose(self, transpose_amount, min_note=0, max_note=128):
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"""Transpose notes and chords in this LeadSheet.
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All notes and chords are transposed the specified amount. Additionally,
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all notes are octave shifted to lie within the [min_note, max_note) range.
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Args:
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transpose_amount: The number of half steps to transpose this
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LeadSheet. Positive values transpose up. Negative values
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transpose down.
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min_note: Minimum pitch (inclusive) that the resulting notes will take on.
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max_note: Maximum pitch (exclusive) that the resulting notes will take on.
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"""
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self._melody.transpose(transpose_amount, min_note, max_note)
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self._chords.transpose(transpose_amount)
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def squash(self, min_note, max_note, transpose_to_key):
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"""Transpose and octave shift the notes and chords in this LeadSheet.
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Args:
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min_note: Minimum pitch (inclusive) that the resulting notes will take on.
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max_note: Maximum pitch (exclusive) that the resulting notes will take on.
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transpose_to_key: The lead sheet is transposed to be in this key.
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Returns:
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The transpose amount, in half steps.
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"""
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transpose_amount = self._melody.squash(min_note, max_note,
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transpose_to_key)
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self._chords.transpose(transpose_amount)
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return transpose_amount
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def set_length(self, steps):
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"""Sets the length of the lead sheet to the specified number of steps.
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Args:
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steps: How many steps long the lead sheet should be.
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"""
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self._melody.set_length(steps)
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self._chords.set_length(steps)
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def extract_lead_sheet_fragments(quantized_sequence,
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min_bars=7,
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gap_bars=1.0,
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min_unique_pitches=5,
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ignore_polyphonic_notes=True,
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require_chords=False):
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"""Extracts a list of lead sheet fragments from the given QuantizedSequence.
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This function first extracts melodies using melodies_lib.extract_melodies,
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then extracts the chords underlying each melody using
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chords_lib.extract_chords_for_melodies.
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Args:
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quantized_sequence: A sequences_lib.QuantizedSequence object.
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min_bars: Minimum length of melodies in number of bars. Shorter melodies are
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discarded.
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gap_bars: A melody comes to an end when this number of bars (measures) of
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silence is encountered.
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min_unique_pitches: Minimum number of unique notes with octave equivalence.
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Melodies with too few unique notes are discarded.
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ignore_polyphonic_notes: If True, melodies will be extracted from
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`quantized_sequence` tracks that contain polyphony (notes start at the
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same time). If False, tracks with polyphony will be ignored.
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require_chords: If True, only return lead sheets that have at least one
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chord other than NO_CHORD. If False, lead sheets with only melody will
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also be returned.
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Returns:
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A python list of LeadSheet instances.
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Raises:
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NonIntegerStepsPerBarException: If `quantized_sequence`'s bar length
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(derived from its time signature) is not an integer number of time
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steps.
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"""
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stats = dict([('empty_chord_progressions',
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statistics.Counter('empty_chord_progressions'))])
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melodies, melody_stats = melodies_lib.extract_melodies(
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quantized_sequence, min_bars=min_bars, gap_bars=gap_bars,
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min_unique_pitches=min_unique_pitches,
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ignore_polyphonic_notes=ignore_polyphonic_notes)
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chord_progressions, chord_stats = chords_lib.extract_chords_for_melodies(
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quantized_sequence, melodies)
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lead_sheets = []
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for melody, chords in zip(melodies, chord_progressions):
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if chords is not None:
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if require_chords and all(chord == chords_lib.NO_CHORD
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for chord in chords):
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stats['empty_chord_progressions'].increment()
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else:
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lead_sheet = LeadSheet()
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lead_sheet.from_melody_and_chords(melody, chords)
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lead_sheets.append(lead_sheet)
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return lead_sheets, stats.values() + melody_stats + chord_stats
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class LeadSheetEncoderDecoder(events_lib.EventsEncoderDecoder):
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"""An abstract class for translating between lead sheets and model data.
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When building your dataset, the `encode` method takes in a lead sheet and
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returns a SequenceExample of inputs and labels. These SequenceExamples are
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fed into the model during training and evaluation.
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During lead sheet generation, the `get_inputs_batch` method takes in a list
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of the current lead sheets and returns an inputs batch which is fed into the
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model to predict what the next note and chord should be for each lead sheet.
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The `extend_lead_sheets` method takes in the list of lead sheets and the
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softmax returned by the model and extends each lead sheet by one step by
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sampling from the softmax probabilities. This loop (`get_inputs_batch` ->
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inputs batch is fed through the model to get a softmax ->
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`extend_lead_sheets`) is repeated until the generated lead sheets have
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reached the desired length.
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The `lead_sheet_to_input`, `lead_sheet_to_label`, and
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`class_index_to_melody_event` methods must be overwritten to be specific to
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your model. See chords_and_melody/basic_rnn/basic_rnn_encoder_decoder.py
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for an example of this.
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"""
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__metaclass__ = abc.ABCMeta
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@abc.abstractproperty
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def min_note(self):
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"""The min pitch value to allow for melodies.
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Returns:
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An integer, the min pitch value to allow for melodies.
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"""
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pass
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@abc.abstractproperty
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def max_note(self):
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"""The max pitch value to allow for melodies.
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Returns:
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An integer, the max pitch value to allow for melodies.
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"""
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pass
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@abc.abstractproperty
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def transpose_to_key(self):
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"""The key, an integer from 0 to 11 inclusive, into which to transpose.
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Returns:
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An integer, the key into which to transpose.
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"""
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pass
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def squash_and_encode(self, lead_sheet):
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"""Returns a SequenceExample for the given lead sheet.
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Args:
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lead_sheet: A LeadSheet object.
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Returns:
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A tf.train.SequenceExample containing inputs and labels.
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"""
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lead_sheet.squash(self.min_note, self.max_note, self.transpose_to_key)
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return self._encode(lead_sheet)
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class LeadSheetProductEncoderDecoder(LeadSheetEncoderDecoder):
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"""A LeadSheetEncoderDecoder that trivially encodes/decodes melody & chords.
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The encoder/decoder uses a MelodyEncoderDecoder and a ChordsEncoderDecoder
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and trivially combines them. The input is a concatenation of the melody and
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chords inputs, and the output label is a product of the melody and chords
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labels.
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"""
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def __init__(self, melody_encoder_decoder, chords_encoder_decoder):
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self._melody_encoder_decoder = melody_encoder_decoder
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self._chords_encoder_decoder = chords_encoder_decoder
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@property
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def min_note(self):
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return self._melody_encoder_decoder.min_note
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@property
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def max_note(self):
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return self._melody_encoder_decoder.max_note
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@property
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def transpose_to_key(self):
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return self._melody_encoder_decoder.transpose_to_key
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@property
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def input_size(self):
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return (self._melody_encoder_decoder.input_size +
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self._chords_encoder_decoder.input_size)
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@property
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def num_classes(self):
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return (self._melody_encoder_decoder.num_classes *
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self._chords_encoder_decoder.num_classes)
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def events_to_input(self, events, position):
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"""Returns the input vector for the lead sheet event at the given position.
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The input vector is the concatenation of the input vectors for the melody
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and chords, using their respective encoder-decoders.
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Args:
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events: A LeadSheet object.
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position: An integer event position in the lead sheet.
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Returns:
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An input vector, a self.input_size length list of floats.
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"""
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melody_input = self._melody_encoder_decoder.melody_to_input(
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events.melody, position)
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chords_input = self.chords_encoder_decoder.chords_to_input(
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events.chords, position)
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return melody_input + chords_input
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def events_to_label(self, events, position):
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"""Returns the label for the lead sheet event at the given position.
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The label is a cartesian product of the melody label and chord label at the
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given position, mapped to a single integer.
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Args:
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events: A LeadSheet object.
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position: An integer event position in the lead sheet.
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|
||
|
Returns:
|
||
|
A label, an integer in the range [0, self.num_classes).
|
||
|
"""
|
||
|
melody_label = self._melody_encoder_decoder.events_to_label(
|
||
|
events.melody, position)
|
||
|
chords_label = self._chords_encoder_decoder.events_to_label(
|
||
|
events.chords, position)
|
||
|
return melody_label + (self._melody_encoder_decoder.num_classes *
|
||
|
chords_label)
|
||
|
|
||
|
def class_index_to_event(self, class_index, events):
|
||
|
"""Returns the lead sheet event for the given class index.
|
||
|
|
||
|
This is the reverse process of the self.events_to_label method. The lead
|
||
|
sheet event will be a tuple, the first element of which is the melody event
|
||
|
and the second element of which is the chord event.
|
||
|
|
||
|
Args:
|
||
|
class_index: An integer in the range [0, self.num_classes).
|
||
|
events: A LeadSheet object.
|
||
|
|
||
|
Returns:
|
||
|
A lead sheet event value, a tuple containing the melody event and chord
|
||
|
event.
|
||
|
"""
|
||
|
melody_index = class_index % self._melody_encoder_decoder.num_classes
|
||
|
chord_index = class_index / self._melody_encoder_decoder.num_classes
|
||
|
return (
|
||
|
self._melody_encoder_decoder.class_index_to_event(melody_index,
|
||
|
events.melody),
|
||
|
self._chords_encoder_decoder.class_index_to_chord_event(chord_index,
|
||
|
events.chords))
|