Multi-level feature learning approaches for video recommendation

H. K. Bhuyan, Biswajit Brahma, P. Rao
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Abstract

This paper addresses to assess the relevant visual strength between two videos based on a great deal with image content analysis. After custom pre-trained image and video content using multi-level feature learning model, video features are widely applied to image and video representation. Although, certain features are task-specific, two videos cannot be the best for all types of work. Additionally, for various reasons like ownership, including anonymity, people only have access to predetermined video functions. Refined video features can be reused without returning to the original video information. For example, an affine transformation is accomplished by reimagining a known function into a new space. We proposed to use maximizing the re-learning method for video recommendation. Instead of creating more training data, we suggested a modern data enhancement approach for a frame-by-frame and video-by-video basis task. Extensive testing of our proposed model is considered using real time data set and found the efficacy of the process and lends strong proof to the performance of video recommendation.
面向视频推荐的多层次特征学习方法
本文在大量图像内容分析的基础上,对两个视频之间的相关视觉强度进行了评估。通过多级特征学习模型自定义预训练的图像和视频内容,视频特征被广泛应用于图像和视频的表示。虽然某些功能是针对特定任务的,但两个视频并不适合所有类型的工作。此外,由于所有权等各种原因,包括匿名性,人们只能访问预定的视频功能。精细化的视频功能可以在不返回到原始视频信息的情况下重用。例如,仿射变换是通过将已知函数重新想象到新的空间中来完成的。我们提出使用最大化的再学习方法进行视频推荐。而不是创建更多的训练数据,我们提出了一种现代的数据增强方法,用于逐帧和逐视频的任务。利用实时数据集对我们提出的模型进行了广泛的测试,发现了该过程的有效性,并为视频推荐的性能提供了强有力的证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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