Low-Complexity Video Classification using Recurrent Neural Networks

Ifat Abramovich, Tomer Ben-Yehuda, R. Cohen
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引用次数: 3

Abstract

Deep learning has led to great successes in computer vision tasks such as image classification. This is mostly attributed to the availability of large image datasets such as ImageNet. However, the progress in video classification has been slower, especially due to the small size of available video datasets and larger computational and memory demands. To promote innovation and advancement in this field, Google announced the YouTube-8M dataset in 2016, which is a public video dataset containing about 8-million tagged videos. In this paper, we train several deep neural networks for video classification on a subset of YouTube-8M. Our approach is based on extracting frame-level features using the Inception-v3 network, which are later used by recurrent neural networks with LSTM/BiLSTM units for video classification. We focus on network architectures with low computational requirements and present a detailed performance comparison. We show that for 5 categories, more than 96% of the videos are labeled correctly, where for 10 categories more than 89% of the videos are labeled correctly. We demonstrate that transfer learning leads to substantial saving in training time, while offering good results.
基于递归神经网络的低复杂度视频分类
深度学习在图像分类等计算机视觉任务中取得了巨大成功。这主要归功于像ImageNet这样的大型图像数据集的可用性。然而,视频分类的进展一直较慢,特别是由于可用视频数据集的规模较小以及对计算和内存的需求较大。为了推动这一领域的创新和进步,谷歌在2016年公布了YouTube-8M数据集,这是一个包含约800万个标记视频的公共视频数据集。在本文中,我们在YouTube-8M的一个子集上训练了几个用于视频分类的深度神经网络。我们的方法是基于使用Inception-v3网络提取帧级特征,这些特征后来被带有LSTM/BiLSTM单元的递归神经网络用于视频分类。我们关注低计算需求的网络架构,并给出了详细的性能比较。我们发现,对于5个类别,超过96%的视频被正确标记,而对于10个类别,超过89%的视频被正确标记。我们证明了迁移学习可以节省大量的训练时间,同时提供良好的效果。
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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