Instance-aware Semantic Segmentation via Multi-task Network Cascades

  • Jifeng Dai ,
  • Kaiming He ,
  • Jian Sun

IEEE Conference on Computer Vision and Pattern Recognition (CVPR) |

Published by IEEE

1-st place winner of the MS COCO 2015 segmentation challenge 0.36 sec/image test speed (using VGG-16 net)

Semantic segmentation research has recently witnessed rapid progress, but many leading methods are unable to identify object instances. In this paper, we present Multi-task Network Cascades for instance-aware semantic segmentation. Our model consists of three networks, respectively differentiating instances, estimating masks, and categorizing objects. These networks form a cascaded structure, and are designed to share their convolutional features. We develop an algorithm for the nontrivial end-to-end training of this causal, cascaded structure. Our solution is a clean, single-step training framework and can be generalized to cascades that have more stages. We demonstrate state-of-the-art instance-aware semantic segmentation accuracy on PASCAL VOC. Meanwhile, our method takes only 360ms testing an image using VGG-16, which is two orders of magnitude faster than previous systems for this challenging problem. As a by product, our method also achieves compelling object detection results which surpass the competitive Fast/Faster R-CNN systems.