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Movie trailer classification using deer hunting optimization based deep convolutional neural network in video sequences

机译:电影拖车分类使用基于鹿狩猎优化的视频序列中的深卷积神经网络

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摘要

In current situation, video classification is one of the important research domains. Since video is a complex media with various components, classification of video is normally a complex process. This paper presented a human action based movie trailer classification using optimized deep convolutional neural network in video sequences. Initially, images are converted into the grayscale conversion. Using the adaptive median filtering process, the pre-processing stage is accomplished. Threshold based segmentation approach is utilized for subtracting the background from the video frames and to extract the foreground portion. In the feature extraction stage, the visual features (color and texture features) and motion features are extracted from the segmented portion. Finally, the mined features are trained and classified with the help of optimized deep convolutional neural network (DCNN) for the movie trailer classifications. Here, the deer hunting optimization (DHO) is introduced to optimize the weight values of DCNN. The proposed (DCNN-DHO) human action based movie trailer classification is executed in the MATLAB environment. The experimental results are evaluated and compared with the existing methods in terms of accuracy, false alarm rate, sensitivity, specificity, precision, F-measure and false discovery rate. The results of the proposed method are compared with filtering process and without filtering process in which 95.23% of accuracy is achieved for the suggested approach with filtering and 90.91% of accuracy is achieved for the suggested approach without filtering process.
机译:在目前的情况下,视频分类是重要的研究领域之一。由于视频是具有各种组件的复杂媒体,因此视频的分类通常是一个复杂的过程。本文介绍了一种基于人类动作的电影拖车分类,在视频序列中使用优化的深度卷积神经网络。最初,图像转换为灰度转换。使用自适应中值滤波过程,完成预处理阶段。基于阈值的分割方法用于从视频帧中减去背景并提取前景部分。在特征提取阶段,从分段部分提取视觉特征(颜色和纹理特征)和运动特征。最后,利用优化的深度卷积神经网络(DCNN)为电影预告片分类进行培训和分类。这里,引入鹿狩猎优化(DHO)以优化DCNN的重量值。所提出的(DCNN-DHO)基于人类动作的电影预告片分类在Matlab环境中执行。在准确度,误报率,灵敏度,特异性,精度,F测量和假发现率方面,评估实验结果并与现有方法进行比较。将所提出的方法的结果与过滤过程进行比较,而无需过滤过程,其中对于通过过滤过程的建议的方法实现了95.23%的精度,为建议的方法实现了90.91%的准确性。

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