utils.py 8.52 KB
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import os
import time
import hashlib
import datetime
import torch
import torch.nn as nn
import logging
import numpy as np
import pandas as pd
import pytorch_lightning as ptl
from matplotlib import pyplot as plt
from tqdm import tqdm
plt.rcParams["figure.dpi"] = 288 # increase dpi for clearer plots

from plotting import * # mostly for debug

# PARAMS =======================
INPUT_SIZE = (96, 256)
MAX_FRAMES = 40


# CONFIG =======================

# paths:
hostname = os.uname()[1]
if hostname in ['rechenknecht0.cp.jku.at', 'rechenknecht1.cp.jku.at', 'rechenknecht3.cp.jku.at']:
    plt.switch_backend('agg')
    PATH_DATA_ROOT = '/home/shreyan/data/MTG-Jamendo'
    USE_GPU = True
else:
    PATH_DATA_ROOT = '/mnt/2tb/datasets/MTG-Jamendo'
    USE_GPU = False

PATH_PROJECT_ROOT = os.path.dirname(os.path.realpath(__file__))
PATH_AUDIO = os.path.join(PATH_DATA_ROOT, 'MTG-Jamendo_audio')
PATH_ANNOTATIONS = os.path.join(PATH_DATA_ROOT, 'MTG-Jamendo_annotations')
PATH_MELSPEC_DOWNLOADED = os.path.join(PATH_DATA_ROOT, 'MTG-Jamendo_melspec_downloaded')
PATH_MELSPEC_DOWNLOADED_FRAMED = os.path.join(PATH_MELSPEC_DOWNLOADED, 'framed')
PATH_RESULTS = os.path.join(PATH_PROJECT_ROOT, 'results')
TRAINED_MODELS_PATH = ''

# run name
def make_run_name(suffix=''):
    assert ' ' not in suffix
    hash = hashlib.sha1()
    hash.update(str(time.time()).encode('utf-8'))
    run_hash = hash.hexdigest()[:5]
    name = run_hash + suffix
    return name

curr_run_name = make_run_name()
CURR_RUN_PATH = os.path.join(PATH_RESULTS, 'runs', curr_run_name)

if not os.path.isdir(CURR_RUN_PATH):
    os.mkdir(CURR_RUN_PATH)

# SET UP LOGGING =============================================
filelog = logging.getLogger()
streamlog = logging.getLogger()
logger = logging.getLogger()
fh = logging.FileHandler(os.path.join(CURR_RUN_PATH, f'{curr_run_name}.log'))
sh = logging.StreamHandler()
formatter = logging.Formatter('%(asctime)s\t%(name)s\t%(levelname)s\t%(message)s')
fh.setFormatter(formatter)
sh.setFormatter(formatter)

# filelog logs only to file
filelog.addHandler(fh)
filelog.setLevel(logging.INFO)

# streamlog logs only to terminal
streamlog.addHandler(sh)
streamlog.setLevel(logging.INFO)

# logger logs to both file and terminal
logger.addHandler(fh)
logger.addHandler(sh)
logger.setLevel(logging.DEBUG)

# ============================================

def write_to_file(data, path):
    # not fully implemented. unused function as of now.
    with open(path, 'w') as f:
        if isinstance(data, np.ndarray):
            for i in data:
                f.writelines(i)


def dims_calc(obj, in_shape):
    """
    utility function to calculate output dimensions of a conv2d or maxpool2d stage
    """
    kernel_size = obj.kernel_size
    stride = obj.stride
    padding = obj.padding
    dilation = obj.dilation
    h_in = in_shape[0]
    w_in = in_shape[1]

    if isinstance(obj, nn.Conv2d):
        h_out = int(((h_in + 2*padding[0] - dilation[0]*(kernel_size[0]-1))/stride[0])+1)
        w_out = int(((w_in + 2*padding[1] - dilation[1]*(kernel_size[1]-1))/stride[1])+1)
        out_shape = [h_out, w_out, obj.out_channels]
    elif isinstance(obj, nn.MaxPool2d):
        if isinstance(padding, int):
            padding = (padding, padding)
        if isinstance(dilation, int):
            dilation = (dilation, dilation)
        if isinstance(kernel_size, int):
            kernel_size = (kernel_size, kernel_size)
        if isinstance(stride, int):
            stride = (stride, stride)

        h_out = int(((h_in + 2 * padding[0] - dilation[0] * (kernel_size[0] - 1) -1) / stride[0]) + 1)
        w_out = int(((w_in + 2 * padding[1] - dilation[1] * (kernel_size[1] - 1)-1) / stride[1]) + 1)
        out_shape = [h_out, w_out, in_shape[2]]
    else:
        out_shape = [None, None, None]
    return out_shape

def preprocess_and_save_annotation_files():
    """
    Removes 'mood/theme---' from tag names, and replaces tabs between multiple tag names with commas.
    Writes processed filename.ext as filename_processed.ext
    """
    import re
    filelist = os.listdir(PATH_ANNOTATIONS)
    for file in filelist:
        # Check if the current file is processed or has a processed copy.
        # Skip if either of this is true. Else process.
        if 'processed' in os.path.splitext(file)[0].split('_') or\
            f'{os.path.splitext(file)[0]}_processed{os.path.splitext(file)[1]}' in filelist:
            continue
        else:
            with open(os.path.join(PATH_ANNOTATIONS, file), 'r') as f:
                text = f.read()
            text = re.sub(r'mood/theme---(\w*)\n', r'\1\n', text) # matches last or singular tags
            text = re.sub(r'mood/theme---(\w*)(\s*)', r'\1,', text) # matches all other tags

            with open(os.path.join(PATH_ANNOTATIONS,
                                   f'{os.path.splitext(file)[0]}_processed{os.path.splitext(file)[1]}'), 'w') as fw:
                fw.write(text)


def trim_silence(spec, thresh=0.1):
    """
    Trims silence from the beginning and end of a song spectrogram based on a threshold
    applied to the median loudness. Loudness is calculated by summing the magnitudes
    over the frequency axis for each time frame.
    """
    loudness = np.sum(spec, axis=0)
    loudness = loudness - np.min(loudness)
    cutoff = thresh*np.median(loudness)
    start = 0
    end = len(loudness)
    for i in range(len(loudness)):
        if loudness[i] > cutoff:
            start = i
            break
    for i in range(len(loudness)-1, start, -1):
        if loudness[i] > cutoff:
            end = i
            break
    return spec[:,start:end]


def make_framed_spec(spec, frame_length, total_frames=None,
                hop=0.5, discard_end=False, filler='wrap'):
    """
    Given a spectrogram of an entire song, this function splits it into frames and returns
    a torch tensor with an additional dimension (frame number) and the framed spectrogram
    chunks. Each frame is meant to be directly fed into a model input of matching size.
    """
    assert filler in ['wrap', 'pad'], logger.error(f"filler is {filler}, must be either wrap or pad")
    fstart = 0
    fend = int(frame_length)
    framed_spec = []

    while fend < spec.shape[1]:
        framed_spec.append(spec[:,fstart:fend])
        fstart += int(hop*frame_length)
        fend = fstart + int(frame_length)
    if not discard_end:
        framed_spec.append(spec[:,-frame_length:])

    if total_frames is not None:
        if len(framed_spec) > total_frames:
            framed_spec = framed_spec[:total_frames]
        else:
            if filler in ['wrap']:
                # Wrap around
                while len(framed_spec) < total_frames:
                    framed_spec.extend(framed_spec[0:total_frames-len(framed_spec)])
            else:
                # Pad with silence
                silence = np.zeros(spec[:,0:frame_length].shape)
                while len(framed_spec) < total_frames:
                    framed_spec.extend(silence)

    framed_spec = torch.from_numpy(np.array(framed_spec))
    return framed_spec


def preprocess_specs(source_root, destination_root, frame_length=256, hop=1.0):
    """
    Reads spectrograms from source_root and performs:
        - trim_silence()
        - make_framed_spec()
    and saves the resulting framed spectrograms to destination_root
    """
    if not os.path.exists(destination_root):
        os.mkdir(destination_root)

    filelist = os.walk(source_root)

    for dirpath, _, filenames in filelist:
        # Ignore dir of framed specs
        if dirpath is destination_root:
            continue

        for filename in tqdm(filenames):
            destination_subdir = os.path.join(destination_root, dirpath.split('/')[-1])
            if os.path.exists(os.path.join(destination_subdir, filename)):
                # If framed melspec already exists, don't preprocess
                continue
            else:
                if not os.path.exists(destination_subdir):
                    os.mkdir(destination_subdir)
                destination = os.path.join(destination_subdir, filename)
                spec = np.load(os.path.join(dirpath, filename))
                spec = trim_silence(spec)
                framed_spec = make_framed_spec(spec, frame_length=frame_length, hop=hop)
                np.save(destination, framed_spec)


if __name__=='__main__':
    # TESTS

    # c = nn.Conv2d(512, 256, 1, 1, 0) # (in_channels, out_channels, kernel_size, stride, padding)
    # m = nn.MaxPool2d(2)
    # print(dims_calc(c, [37, 17, 512]))
    preprocess_specs(source_root=PATH_MELSPEC_DOWNLOADED,
                     destination_root=PATH_MELSPEC_DOWNLOADED_FRAMED)
    pass