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Cascade of classifiers based on binary, non-binary and deep convolutional network descriptors for video concept detection

机译:基于二进制,非二进制和深度卷积网络描述符的分类器级联,用于视频概念检测

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In this paper we propose a cascade architecture that can be used to train and combine different visual descriptors (local binary, local non-binary and Deep Convolutional Neural Network-based) for video concept detection. The proposed architecture is computationally more efficient than typical state-of-the-art video concept detection systems, without affecting the detection accuracy. In addition, this work presents a detailed study on combining descriptors based on Deep Convolutional Neural Networks with other popular local descriptors, both within a cascade and when using different late-fusion schemes. We evaluate our methods on the extensive video dataset of the 2013 TRECVID Semantic Indexing Task.
机译:在本文中,我们提出了一种可用于训练和组合不同的视觉描述符(基于本地二进制,本地非二进制和基于深度卷积神经网络的视频描述符)的级联架构,用于视频概念检测。所提出的体系结构在计算上比典型的最新视频概念检测系统更有效,而不会影响检测精度。此外,这项工作还提供了有关在深度级联以及使用不同的后期融合方案时将基于深度卷积神经网络的描述符与其他流行的本地描述符进行组合的详细研究。我们在2013 TRECVID语义索引任务的广泛视频数据集上评估了我们的方法。

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