Collaborative Video Object Segmentation by Foreground-Background Integration

ECCV 2020  ·  Zongxin Yang, Yunchao Wei, Yi Yang ·

This paper investigates the principles of embedding learning to tackle the challenging semi-supervised video object segmentation. Different from previous practices that only explore the embedding learning using pixels from foreground object (s), we consider background should be equally treated and thus propose Collaborative video object segmentation by Foreground-Background Integration (CFBI) approach. Our CFBI implicitly imposes the feature embedding from the target foreground object and its corresponding background to be contrastive, promoting the segmentation results accordingly. With the feature embedding from both foreground and background, our CFBI performs the matching process between the reference and the predicted sequence from both pixel and instance levels, making the CFBI be robust to various object scales. We conduct extensive experiments on three popular benchmarks, i.e., DAVIS 2016, DAVIS 2017, and YouTube-VOS. Our CFBI achieves the performance (J$F) of 89.4%, 81.9%, and 81.4%, respectively, outperforming all the other state-of-the-art methods. Code: https://github.com/z-x-yang/CFBI.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Semi-Supervised Video Object Segmentation DAVIS 2016 CFBI Jaccard (Mean) 88.3 # 36
F-measure (Mean) 90.5 # 34
J&F 89.4 # 33
Semi-Supervised Video Object Segmentation DAVIS 2017 (test-dev) CFBI J&F 74.8 # 34
Jaccard (Mean) 71.1 # 34
F-measure (Mean) 78.5 # 33
Semi-Supervised Video Object Segmentation DAVIS 2017 (val) CFBI Jaccard (Mean) 79.1 # 38
F-measure (Mean) 84.6 # 38
J&F 81.9 # 38
Semi-Supervised Video Object Segmentation DAVIS (no YouTube-VOS training) CFBI FPS 5.56 # 18
D16 val (G) 86.1 # 7
D16 val (J) 85.3 # 9
D16 val (F) 86.9 # 5
D17 val (G) 74.9 # 10
D17 val (J) 72.1 # 12
D17 val (F) 77.7 # 9
Semi-Supervised Video Object Segmentation YouTube-VOS 2018 CFBI F-Measure (Seen) 85.8 # 36
F-Measure (Unseen) 83.4 # 37
Overall 81.4 # 37
Speed (FPS) 3.4 # 25
Jaccard (Seen) 81.1 # 37
Jaccard (Unseen) 75.3 # 37
Params(M) 66.3 # 22
Video Object Segmentation YouTube-VOS 2019 CFBI+ Mean Jaccard & F-Measure 82.6 # 8
Jaccard (Seen) 81.7 # 7
Jaccard (Unseen) 77.1 # 7
F-Measure (Seen) 86.2 # 7
F-Measure (Unseen) 85.2 # 8

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