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Papers/VideoMatch: Matching based Video Object Segmentation

VideoMatch: Matching based Video Object Segmentation

Yuan-Ting Hu, Jia-Bin Huang, Alexander G. Schwing

2018-09-04ECCV 2018 9Semi-Supervised Video Object SegmentationSegmentationSemantic SegmentationVideo Object SegmentationVideo Semantic SegmentationMemorization
PaperPDF

Abstract

Video object segmentation is challenging yet important in a wide variety of applications for video analysis. Recent works formulate video object segmentation as a prediction task using deep nets to achieve appealing state-of-the-art performance. Due to the formulation as a prediction task, most of these methods require fine-tuning during test time, such that the deep nets memorize the appearance of the objects of interest in the given video. However, fine-tuning is time-consuming and computationally expensive, hence the algorithms are far from real time. To address this issue, we develop a novel matching based algorithm for video object segmentation. In contrast to memorization based classification techniques, the proposed approach learns to match extracted features to a provided template without memorizing the appearance of the objects. We validate the effectiveness and the robustness of the proposed method on the challenging DAVIS-16, DAVIS-17, Youtube-Objects and JumpCut datasets. Extensive results show that our method achieves comparable performance without fine-tuning and is much more favorable in terms of computational time.

Results

TaskDatasetMetricValueModel
VideoDAVIS 2017 (val)F-measure (Mean)68.2VideoMatch
VideoDAVIS 2017 (val)J&F62.4VideoMatch
VideoDAVIS 2017 (val)Jaccard (Mean)56.5VideoMatch
Video Object SegmentationDAVIS 2017 (val)F-measure (Mean)68.2VideoMatch
Video Object SegmentationDAVIS 2017 (val)J&F62.4VideoMatch
Video Object SegmentationDAVIS 2017 (val)Jaccard (Mean)56.5VideoMatch
Semi-Supervised Video Object SegmentationDAVIS 2017 (val)F-measure (Mean)68.2VideoMatch
Semi-Supervised Video Object SegmentationDAVIS 2017 (val)J&F62.4VideoMatch
Semi-Supervised Video Object SegmentationDAVIS 2017 (val)Jaccard (Mean)56.5VideoMatch

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