基于k步距离变换图像的轮廓损失分割

Xiaolong Guo, Xiaosong Lan, Kunfeng Wang, Shuxiao Li
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引用次数: 1

摘要

实例分割的目的是在图像中定位目标,并在像素级对每个目标区域进行分割,这是计算机视觉中的重要任务之一。Mask R-CNN是一种经典的实例分割方法,但我们发现其预测的Mask在轮廓附近不清晰且不准确。为了解决这一问题,我们借鉴了基于距离变换图像的轮廓匹配思想,提出了一种新的轮廓损失函数。轮廓损失的设计是为了专门优化预测掩码的轮廓部分,从而保证更准确的实例分割。为了使所提出的轮廓损失能够在现代神经网络框架下进行联合训练,我们设计了一个可微k步距离变换图像计算模块,该模块可以在线近似计算预测掩模和相应的地真掩模的截断距离变换图像。所提出的轮廓损失可以集成到现有的实例分割方法(如Mask R-CNN)中,在不修改推理网络结构的情况下与原有的损失函数结合,具有较强的通用性。实验结果表明,轮廓损失算法是有效的,可以进一步提高实例分割的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contour Loss for Instance Segmentation via k-step Distance Transformation Image
Instance segmentation aims to locate targets in the image and segment each target area at pixel level, which is one of the most important tasks in computer vision. Mask R-CNN is a classic method of instance segmentation, but we find that its predicted masks are unclear and inaccurate near contours. To cope with this problem, we draw on the idea of contour matching based on distance transformation image and propose a novel loss function, called contour loss. Contour loss is designed to specifically optimize the contour parts of the predicted masks, thus can assure more accurate instance segmentation. In order to make the proposed contour loss to be jointly trained under modern neural network frameworks, we design a differentiable k-step distance transformation image calculation module, which can approximately compute truncated distance transformation images of the predicted mask and corresponding ground-truth mask online. The proposed contour loss can be integrated into existing instance segmentation methods such as Mask R-CNN, and combined with their original loss functions without modification of the inference network structures, thus has strong versatility. Experimental results on COCO show that contour loss is effective, which can further improve instance segmentation performances.
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