JOURNAL ARTICLE

BRefine: Achieving High-Quality Instance Segmentation

Jimin YuXiankun YangShangbo ZhouShougang WangShangguo Hu

Year: 2022 Journal:   Sensors Vol: 22 (17)Pages: 6499-6499   Publisher: Multidisciplinary Digital Publishing Institute

Abstract

Instance segmentation has been developing rapidly in recent years. Mask R-CNN, a two-stage instance segmentation approach, has demonstrated exceptional performance. However, the masks are still very coarse. The downsampling operation of the backbone network and the ROIAlign layer loses much detailed information, especially from large targets. The sawtooth effect of the edge mask is caused by the lower resolution. A lesser percentage of boundary pixels leads to not-fine segmentation. In this paper, we propose a new method called Boundary Refine (BRefine) that achieves high-quality segmentation. This approach uses FCN as the foundation segmentation architecture, and forms a multistage fusion mask head with multistage fusion detail features to improve mask resolution. However, the FCN architecture causes inconsistencies in multiscale segmentation. BRank and sort loss (BR and S loss) is proposed to solve the problems of segmentation inconsistency and the difficulty of boundary segmentation. It is combined with rank and sort loss, and boundary region loss. BRefine can handle hard-to-partition boundaries and output high-quality masks. On the COCO, LVIS, and Cityscapes datasets, BRefine outperformed Mask R-CNN by 3.0, 4.2, and 3.5 AP, respectively. Furthermore, on the COCO dataset, the large objects improved by 5.0 AP.

Keywords:
Segmentation Computer science Upsampling Artificial intelligence Enhanced Data Rates for GSM Evolution Boundary (topology) Pixel Scale-space segmentation Pattern recognition (psychology) Computer vision Image segmentation Image (mathematics) Mathematics

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Advanced Neural Network Applications
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