• 基于opencv+ffmpeg的镜头分割


    镜头分割常常被用于视频智能剪辑、视频关键帧提取等场景。

    本文给出一种解决镜头分割问题的思路,可分为两个步骤:

    1、根据镜头分割算法对视频进行分割标记

    核心在于镜头分割算法,这里简单描述一种算法思路:ratio = different(current_frame_histogram, prevous_frame_histogram) / avgvere_different(previous_frame_histogram),通过大量试验找到合适的ratio 阈值,若ratio大于阈值,则从当前帧分割视频,由于版权原因本文省略具体算法及实现。利用cv2的calcHist计算帧RGB三通道histogram的代码如下:

        for id in range(3):
            self.current_hist_rgb[id] = cv2.calcHist([frame], [0], None, [256], [0, 255]) 

    2、 根据分割标记进行实际分割

    本文使用ffmpeg进行视频分割(需安装ffmpeg),具体命令如下

    ffmpeg -ss starttime -i input.mp4 -t duration -codec copy -codec copy output.mp4 -y

    命令中参数的顺序不能任意调整,-ss必须是第一个参数,否则分割后的视频可能出现黑屏,-t参数必须在-i参数后面,否则分割后视频可能出现时长不正确的问题。从实际效果来看,分割点并不准确在-ss参数指定的时间点,而是之前最近的关键帧。

    最后,本文采用ffmpeg-python(需要用pip安装)来计算视频pts,具体实现见VideoCutEngine的calcPTS方法。

    实现代码:

    import cv2
    import ffmpeg
    import numpy as np
    import sys
    import os
    
    class VideoCutEngine():
        def __init__(self, input):
            self.input = input
    
        def calcPTS(self):
            try:
                probe = ffmpeg.probe(self.input)
            except ffmpeg.Error as e:
                print(e.stderr, sys.stderr)
                return False, 0
    
            video_stream = next((stream for stream in probe['streams'] if stream['codec_type'] == 'video'), None)
            if video_stream is None:
                return False, 1
    
            num_frames = int(video_stream['nb_frames'])
            duration = float(video_stream['duration'])
    
            return True, num_frames * 1.0 / duration
    
        def doCut(self, start, duration, output):      
            cmd = 'ffmpeg -ss {} -i {} -t {} -codec copy -codec copy {} -y'.format(start, self.input, duration, output)
            ret = os.system(cmd)
            return ret
    
    
    class SceneSplitEngine():
        def __init__(self):
            self.frame = None
            self.current_hist_rgb = [0, 0, 0]
            self.last_hist_rgb = [0, 0, 0]
            self.frame_count = 0
            self.current_shot_count = 0
            self.hist_diff = []
        
        def setFrmae(self,frame):
            self.frame = frame
            self.frame_count += 1
            self.current_shot_count += 1
            
        def doSplit(self):
            for id in range(3):
                self.current_hist_rgb[id] = cv2.calcHist([frame], [0], None, [256], [0, 255])
    
            具体算法实现省略。
    
    input = '/data/test.mp4'
            
    if __name__ == '__main__':
        sceneSpliter = SceneSplitEngine()
        videoCutter = VideoCutEngine(input)
        videoCapturer = cv2.VideoCapture(input)
    
        pts = videoCutter.calcPTS()
        
        while True:
            ret1, frame = videoCapturer.read()
            if ret1 == True:
                sceneSpliter.setFrmae(frame)
                ret2, start, end = sceneSpliter.doSplit()
                if ret2 == True:
                    duration = max((end -start) / 24, 1) 
                    print(ret2, start / 24, duration)   
                    output = '/data/output{}.mp4'.format(start / 24)              
                    videoCutter.doCut(start / 24, duration, output)
            else:
                break
    

      

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  • 原文地址:https://www.cnblogs.com/dskit/p/10003722.html
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