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Papers/SegFlow: Joint Learning for Video Object Segmentation and ...

SegFlow: Joint Learning for Video Object Segmentation and Optical Flow

Jingchun Cheng, Yi-Hsuan Tsai, Shengjin Wang, Ming-Hsuan Yang

2017-09-20ICCV 2017 10Unsupervised Video Object SegmentationVisual Object TrackingSemi-Supervised Video Object SegmentationOptical Flow EstimationSegmentationSemantic SegmentationVideo Object SegmentationVideo Semantic SegmentationImage Segmentation
PaperPDFCode(official)

Abstract

This paper proposes an end-to-end trainable network, SegFlow, for simultaneously predicting pixel-wise object segmentation and optical flow in videos. The proposed SegFlow has two branches where useful information of object segmentation and optical flow is propagated bidirectionally in a unified framework. The segmentation branch is based on a fully convolutional network, which has been proved effective in image segmentation task, and the optical flow branch takes advantage of the FlowNet model. The unified framework is trained iteratively offline to learn a generic notion, and fine-tuned online for specific objects. Extensive experiments on both the video object segmentation and optical flow datasets demonstrate that introducing optical flow improves the performance of segmentation and vice versa, against the state-of-the-art algorithms.

Results

TaskDatasetMetricValueModel
VideoDAVIS 2016F-measure (Decay)10.4SFL
VideoDAVIS 2016F-measure (Mean)76SFL
VideoDAVIS 2016F-measure (Recall)85.5SFL
VideoDAVIS 2016J&F76.05SFL
VideoDAVIS 2016Jaccard (Decay)12.1SFL
VideoDAVIS 2016Jaccard (Mean)76.1SFL
VideoDAVIS 2016Jaccard (Recall)90.6SFL
Video Object SegmentationDAVIS 2016F-measure (Decay)10.4SFL
Video Object SegmentationDAVIS 2016F-measure (Mean)76SFL
Video Object SegmentationDAVIS 2016F-measure (Recall)85.5SFL
Video Object SegmentationDAVIS 2016J&F76.05SFL
Video Object SegmentationDAVIS 2016Jaccard (Decay)12.1SFL
Video Object SegmentationDAVIS 2016Jaccard (Mean)76.1SFL
Video Object SegmentationDAVIS 2016Jaccard (Recall)90.6SFL
Semi-Supervised Video Object SegmentationDAVIS 2016F-measure (Decay)10.4SFL
Semi-Supervised Video Object SegmentationDAVIS 2016F-measure (Mean)76SFL
Semi-Supervised Video Object SegmentationDAVIS 2016F-measure (Recall)85.5SFL
Semi-Supervised Video Object SegmentationDAVIS 2016J&F76.05SFL
Semi-Supervised Video Object SegmentationDAVIS 2016Jaccard (Decay)12.1SFL
Semi-Supervised Video Object SegmentationDAVIS 2016Jaccard (Mean)76.1SFL
Semi-Supervised Video Object SegmentationDAVIS 2016Jaccard (Recall)90.6SFL

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