Deep Interactive Object Selection

Interactive object selection is a very important research problem and has many applications. Previous algorithms require substantial user interactions to estimate the foreground and background distributions. In this paper, we present a novel deep learning based algorithm which has a much better understanding of objectness and thus can reduce user interactions to just a few clicks. Our algorithm transforms user provided positive and negative clicks into two Euclidean distance maps which are then concatenated with the RGB channels of images to compose (image, user interactions) pairs. We generate many of such pairs by combining several random sampling strategies to model user click patterns and use them to fine tune deep Fully Convolutional Networks (FCNs). Finally the output probability maps of our FCN 8s model is integrated with graph cut optimization to refine the boundary segments. Our model is trained on the PASCAL segmentation dataset and evaluated on other datasets with different object classes. Experimental results on both seen and unseen objects clearly demonstrate that our algorithm has a good generalization ability and is superior to all existing interactive object selection approaches.

PDF Abstract CVPR 2016 PDF CVPR 2016 Abstract

Results from the Paper


Results from Other Papers


Task Dataset Model Metric Name Metric Value Rank Source Paper Compare
Interactive Segmentation DAVIS DOS w/o GC NoC@85 12.52 # 14
NoC@90 17.11 # 14
Interactive Segmentation DAVIS DOS with GC NoC@85 9.03 # 13
NoC@90 12.58 # 13
Interactive Segmentation GrabCut DOS with GC NoC@85 5.08 # 12
NoC@90 6.08 # 18
Interactive Segmentation GrabCut DOS w/o GC NoC@85 8.02 # 13
NoC@90 12.59 # 19
Interactive Segmentation SBD DOS with GC NoC@85 9.22 # 13
NoC@90 12.80 # 11
Interactive Segmentation SBD DOS w/o GC NoC@85 14.30 # 14
NoC@90 16.79 # 12

Methods


No methods listed for this paper. Add relevant methods here