Region Aware Video Object Segmentation with Deep Motion Modeling

21 Jul 2022  ·  Bo Miao, Mohammed Bennamoun, Yongsheng Gao, Ajmal Mian ·

Current semi-supervised video object segmentation (VOS) methods usually leverage the entire features of one frame to predict object masks and update memory. This introduces significant redundant computations. To reduce redundancy, we present a Region Aware Video Object Segmentation (RAVOS) approach that predicts regions of interest (ROIs) for efficient object segmentation and memory storage. RAVOS includes a fast object motion tracker to predict their ROIs in the next frame. For efficient segmentation, object features are extracted according to the ROIs, and an object decoder is designed for object-level segmentation. For efficient memory storage, we propose motion path memory to filter out redundant context by memorizing the features within the motion path of objects between two frames. Besides RAVOS, we also propose a large-scale dataset, dubbed OVOS, to benchmark the performance of VOS models under occlusions. Evaluation on DAVIS and YouTube-VOS benchmarks and our new OVOS dataset show that our method achieves state-of-the-art performance with significantly faster inference time, e.g., 86.1 J&F at 42 FPS on DAVIS and 84.4 J&F at 23 FPS on YouTube-VOS.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Uses Extra
Training Data
Result Benchmark
Semi-Supervised Video Object Segmentation DAVIS 2016 RAVOS Jaccard (Mean) 90.8 # 7
F-measure (Mean) 92.6 # 20
J&F 91.7 # 17
Speed (FPS) 58 # 5
Semi-Supervised Video Object Segmentation DAVIS 2017 (val) RAVOS Jaccard (Mean) 82.9 # 15
F-measure (Mean) 89.3 # 14
J&F 86.1 # 16
Speed (FPS) 42 (on 3090) # 6
Semi-Supervised Video Object Segmentation YouTube-VOS 2018 RAVOS F-Measure (Seen) 87.8 # 26
F-Measure (Unseen) 87.4 # 12
Overall 84.4 # 19
Speed (FPS) 23 # 10
Jaccard (Seen) 83.1 # 24
Jaccard (Unseen) 79.1 # 12

Methods