Video semantic segmentation using deep multi-view representation learning

A. Sellami, S. Tabbone
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引用次数: 2

Abstract

In this paper, we propose a deep learning model based on deep multi-view representation learning, to address the video object segmentation task. The proposed model emphasizes the importance of the inherent correlation between video frames and incorporates a multi-view representation learning based on deep canonically correlated autoencoders. The multi-view representation learning in our model provides an efficient mechanism for capturing inherent correlations by jointly extracting useful features and learning better representation into a joint feature space, i.e., shared representation. To increase the training data and the learning capacity, we train the proposed model with pairs of video frames, i.e., Fa and Fb. During the segmentation phase, the deep canonically correlated auto encoders model encodes useful features by processing multiple reference frames together, which is used to detect the frequently reappearing. Our model enhances the state-of-the-art deep learning-based methods that mainly focus on learning discriminative foreground representations over appearance and motion. Experimental results over two large benchmarks demonstrate the ability of the proposed method to outperform competitive approaches and to reach good performances, in terms of semantic segmentation.
基于深度多视图表示学习的视频语义分割
本文提出了一种基于深度多视图表示学习的深度学习模型,以解决视频对象分割问题。该模型强调了视频帧之间内在相关性的重要性,并结合了基于深度正则相关自编码器的多视图表示学习。我们模型中的多视图表示学习提供了一种有效的机制,通过联合提取有用的特征并将更好的表示学习到一个联合特征空间,即共享表示,来捕获内在的相关性。为了增加训练数据和学习能力,我们使用对视频帧,即Fa和Fb来训练所提出的模型。在分割阶段,深度正则相关自动编码器模型通过对多个参考帧进行处理,对有用的特征进行编码,用于检测频繁重复的特征。我们的模型增强了最先进的基于深度学习的方法,这些方法主要侧重于学习区别于外观和运动的前景表示。在两个大型基准测试上的实验结果表明,所提出的方法在语义分割方面优于竞争方法,并达到良好的性能。
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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