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I want to train a many-to-many LSTM model to predict dance moves. I am using a relatively large video, and my PC cannot handle to extract all frames in the video. I created a custom class with moviepy to extract frames by using given frame number.

from moviepy.video.io.VideoFileClip import VideoFileClip
from matplotlib import pyplot as plt
from pathlib import Path
from math import ceil
import numpy as np
import time

class Video:
    def __init__(self,path,**kwargs):
        self.path       = path
        self.video      = VideoFileClip(str(path),**kwargs)
    
    def __repr__(self):
        duration = time.strftime('%H:%M:%S',time.gmtime(self.video.duration))
        return f"<{duration} - {self.path.name}>"

    def __len__(self):
        return ceil(self.video.duration*self.video.fps)

    def __getitem__(self,frame_num):
        frame   = self.video.get_frame(frame_num/self.video.fps)
        return frame
    
    def __iter__(self):
        for frame_num in range(self.__len__()):
            yield self.__getitem__(frame_num)

This custom class managed to extract single frames with given frame numbers.

PATH  = Path("data/HenryStickmin.mp4")
HENRY = Video(PATH, audio=False)
<00:59:54 - HenryStickmin.mp4>

frame_nums = np.random.randint(0, len(HENRY), 4)
plt.figure(figsize=(21,13))
for fig_num, frame_num in zip(range(5), frame_nums):
    plt.subplot(221 + fig_num)
    plt.imshow(HENRY[frame_num])
    plt.axis('off')
    plt.title(f'Frame No: {frame_num}', fontweight='bold')
plt.show()

enter image description here

My next goal was to create timeseries dataset but I got this error

import tensorflow as tf
fps  = 30
gen  = tf.keras.preprocessing.sequence.TimeseriesGenerator(HENRY, HENRY, fps * 2, sampling_rate=2, stride=fps)
X, y = gen[0]
---------------------------------------------------------------------------
TypeError                                 Traceback (most recent call last)
<ipython-input-37-a7b22e584018> in <module>
----> 1 X, y = gen[0]

~\.conda\envs\ml\lib\site-packages\keras_preprocessing\sequence.py in __getitem__(self, index)
    370                                     self.stride, self.end_index + 1), self.stride)
    371 
--> 372         samples = np.array([self.data[row - self.length:row:self.sampling_rate]
    373                             for row in rows])
    374         targets = np.array([self.targets[row] for row in rows])

~\.conda\envs\ml\lib\site-packages\keras_preprocessing\sequence.py in <listcomp>(.0)
    370                                     self.stride, self.end_index + 1), self.stride)
    371 
--> 372         samples = np.array([self.data[row - self.length:row:self.sampling_rate]
    373                             for row in rows])
    374         targets = np.array([self.targets[row] for row in rows])

<ipython-input-2-40570a429d12> in __getitem__(self, frame_num)
     13 
     14     def __getitem__(self,frame_num):
---> 15         frame   = self.video.get_frame(frame_num/self.video.fps)
     16         return frame
     17 

TypeError: unsupported operand type(s) for /: 'slice' and 'float'

I wanted to train my model with 1 * FPS frame (1 seconds) to predict 1 * FPS frames (1 second), and expected to get something like this

X[0] = array(['frame[000]', 'frame[002]', 'frame[004]', 'frame[006]',
       'frame[008]', 'frame[010]', 'frame[012]', 'frame[014]',
       'frame[016]', 'frame[018]', 'frame[020]', 'frame[022]',
       'frame[024]', 'frame[026]', 'frame[028]', 'frame[030]',
       'frame[032]', 'frame[034]', 'frame[036]', 'frame[038]',
       'frame[040]', 'frame[042]', 'frame[044]', 'frame[046]',
       'frame[048]', 'frame[050]', 'frame[052]', 'frame[054]',
       'frame[056]', 'frame[058]'])

y[0] = array(['frame[060]', 'frame[062]', 'frame[064]', 'frame[066]',
       'frame[068]', 'frame[070]', 'frame[072]', 'frame[074]',
       'frame[076]', 'frame[078]', 'frame[080]', 'frame[082]',
       'frame[084]', 'frame[086]', 'frame[088]', 'frame[090]',
       'frame[092]', 'frame[094]', 'frame[096]', 'frame[098]',
       'frame[100]', 'frame[102]', 'frame[104]', 'frame[106]',
       'frame[108]', 'frame[110]', 'frame[112]', 'frame[114]',
       'frame[116]', 'frame[118]'])

How can I create a generator to extract (data, target) =(1 second, 1 second) frames from my video?

1
  • 1
    I don't exactly know how __getitem__ works, but this looks like a simple misunderstanding of it. You need to convert frame_num from a 'slice' to a 'int' or 'float'. – Tom Burrows Apr 1 at 15:14
0

The list comp run by keras, samples = np.array([self.data[row - self.length:row:self.sampling_rate] , is passing a slice object into your __getitem__. You'll have to handle both a slice object, and your integer (assuming you want to access your data this way).

I'm not sure if this will work the way you intend, but it should give you a good starting point.

from pathlib import Path
from math import ceil
import time


class VideoFileClip():
    def __init__(self, path, **kwargs):
        self.path = Path(path)
        self.duration = 100
        self.fps = 10

    def get_frame(self, num):
        return self


class Video:
    def __init__(self, path, **kwargs):
        self.path = Path(path)
        self.video = VideoFileClip(str(path),**kwargs)

    def __repr__(self):
        duration = time.strftime('%H:%M:%S',time.gmtime(self.video.duration))
        return f"<{duration} - {self.path.name}>"

    def __len__(self):
        return ceil(self.video.duration * self.video.fps)

    def __getitem__(self, key):
        if isinstance(key, slice):
            start, stop, step = key.indices(len(self))
            # not sure if you can be quite this lazy, but you can 
            # make this a list comp if needed
            return (self[i] for i in range(start, stop, step))
        return self.video.get_frame(key / self.video.fps)

    def __iter__(self):
        for frame_num in range(len(self)):
            yield self[frame_num]
vid = Video("path")
vid[0]
vid[0:100]
0

Still trying to improve my code but this is the best version so far

from moviepy.video.io.VideoFileClip import VideoFileClip
from tensorflow.keras.utils import Sequence
import tensorflow as tf

from cv2 import cvtColor, COLOR_RGB2GRAY
from skimage import img_as_float

from matplotlib import pyplot as plt
from pathlib import Path
import numpy as np

import math, random, time

class FrameGen(Sequence):
    def __init__(self,VideoPath,Xystep,ystep,BatchSize,isGray=False,isNormed=False,**kwargs):
        self.VideoPath          = VideoPath
        self.Video              = VideoFileClip(str(self.VideoPath),**kwargs)
        self.Xystep, self.ystep = Xystep,ystep
        self.BatchSize          = BatchSize
        self.isGray             = isGray
        self.isNormed           = isNormed

    def __repr__(self):
        duration = time.strftime('%H:%M:%S',time.gmtime(self.Video.duration))
        return f"<{duration} - {self.VideoPath.name} @ {self.Video.fps:3.1f} FPS>"

    def __len__(self):
        return math.ceil(self.Video.duration*self.Video.fps/self.BatchSize)

    def __getitem__(self,idx):
        idx0, idx1  = idx*self.BatchSize,(idx+1)*self.BatchSize
        X, y        = self.__getbatch__(idx0,idx1)
        return X, y

    def __getbatch__(self,idx0,idx1):
        X, y = [], []
        for idx in range(idx0,idx1):
            i, j, k = idx0, idx0+self.Xystep-self.ystep, idx0+self.Xystep
            X_, y_  = [], []
            for frame_num in range(i,j):
                frame = self.__getframe__(frame_num/self.Video.fps)
                X_.append(frame)
            for frame_num in range(j,k):
                frame = self.__getframe__(frame_num/self.Video.fps)
                y_.append(frame)
            X.append(X_)
            y.append(y_)
        X = np.stack(X)
        y = np.stack(y)
        return X, y

    def __getframe__(self,frame_num):
        frame = self.Video.get_frame(frame_num/self.Video.fps)
        if self.isGray    : frame = cvtColor(frame, COLOR_RGB2GRAY)
        if self.isNormed  : frame = img_as_float(frame)
        if frame.ndim < 3 : frame = frame[...,np.newaxis]
        return frame
      
PATH            = Path("data/HenryStickmin.mp4")
imW, imH, imC   = 70, 120, 1
HENRY           = FrameGen(PATH, 18, 6, 8, isGray=True, isNormed=True, target_resolution=[imW,imH])

>>> HENRY
<00:59:54 - HenryStickmin.mp4 @ 30.0 FPS>
>>> len(HENRY)
13479
>>> X,y=HENRY[13478]
>>> X.shape
(8, 12, 70, 120, 1)
>>> y.shape
(8, 6, 70, 120, 1)

X[0,0,...,0] enter image description here

y[0,0,...,0] enter image description here

I'm still not sure if this works fine, I think I should add something like stride to avoid using each frame. I'm basically trying to get this same function but with multiple targets.

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