4.5 Article

A temporal attention based appearance model for video object segmentation

期刊

APPLIED INTELLIGENCE
卷 52, 期 2, 页码 2290-2300

出版社

SPRINGER
DOI: 10.1007/s10489-021-02547-4

关键词

Video object segmentation; Convolutional neural networks; Appearance model; Mixture loss

资金

  1. Beijing Natural Science Foundation [4212025]
  2. National Natural Science Foundation of China [61876018, 61976017]

向作者/读者索取更多资源

More and more researchers are focusing on video object segmentation as it is crucial for various computer vision applications, however, challenges such as appearance changes and background distractions persist. This paper introduces a novel neural network that addresses these challenges efficiently.
More and more researchers have recently paid attention to video object segmentation because it is an important building block for numerous computer vision applications. Although many algorithms promote its development, there are still some open challenges. Efficient and robust pipelines are needed to address appearance changes and the distraction from similar background objects in the video object segmentation. This paper proposes a novel neural network that integrates a temporal attention based appearance model and a boundary-aware loss. The appearance model fuses the appearance information of the first frame, the previous frame, and the current frame in the feature space, which assists the proposed method to learn a discriminative and robust target representation and avoid the drift problem of traditional propagation schemes. Moreover, the boundary-aware loss is employed for network training. Equipped with the boundary-aware loss, the proposed method achieves more accurate segmentation results with clear boundaries. The proposed method is compared with several recent state-of-the-art algorithms on popular benchmark datasets. Comprehensive experiments show that the proposed method achieves favorable performance with a high frame rate.

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