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Papers/CRVOS: Clue Refining Network for Video Object Segmentation

CRVOS: Clue Refining Network for Video Object Segmentation

Suhwan Cho, MyeongAh Cho, Tae-young Chung, Heansung Lee, Sangyoun Lee

2020-02-10Visual Object TrackingSemi-Supervised Video Object SegmentationSegmentationSemantic SegmentationVideo Object SegmentationVideo Semantic Segmentation
PaperPDFCode

Abstract

The encoder-decoder based methods for semi-supervised video object segmentation (Semi-VOS) have received extensive attention due to their superior performances. However, most of them have complex intermediate networks which generate strong specifiers to be robust against challenging scenarios, and this is quite inefficient when dealing with relatively simple scenarios. To solve this problem, we propose a real-time network, Clue Refining Network for Video Object Segmentation (CRVOS), that does not have any intermediate network to efficiently deal with these scenarios. In this work, we propose a simple specifier, referred to as the Clue, which consists of the previous frame's coarse mask and coordinates information. We also propose a novel refine module which shows the better performance compared with the general ones by using a deconvolution layer instead of a bilinear upsampling layer. Our proposed method shows the fastest speed among the existing methods with a competitive accuracy. On DAVIS 2016 validation set, our method achieves 63.5 fps and J&F score of 81.6%.

Results

TaskDatasetMetricValueModel
VideoDAVIS 2016F-measure (Decay)8.8CRVOS
VideoDAVIS 2016F-measure (Mean)81CRVOS
VideoDAVIS 2016F-measure (Recall)90.3CRVOS
VideoDAVIS 2016J&F81.6CRVOS
VideoDAVIS 2016Jaccard (Decay)10CRVOS
VideoDAVIS 2016Jaccard (Mean)82.2CRVOS
VideoDAVIS 2016Jaccard (Recall)93.9CRVOS
Video Object SegmentationDAVIS 2016F-measure (Decay)8.8CRVOS
Video Object SegmentationDAVIS 2016F-measure (Mean)81CRVOS
Video Object SegmentationDAVIS 2016F-measure (Recall)90.3CRVOS
Video Object SegmentationDAVIS 2016J&F81.6CRVOS
Video Object SegmentationDAVIS 2016Jaccard (Decay)10CRVOS
Video Object SegmentationDAVIS 2016Jaccard (Mean)82.2CRVOS
Video Object SegmentationDAVIS 2016Jaccard (Recall)93.9CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016F-measure (Decay)8.8CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016F-measure (Mean)81CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016F-measure (Recall)90.3CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016J&F81.6CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016Jaccard (Decay)10CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016Jaccard (Mean)82.2CRVOS
Semi-Supervised Video Object SegmentationDAVIS 2016Jaccard (Recall)93.9CRVOS

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