Recall one time when we were in an unfamiliar mall. We might mistakenly think that there exists or does not exist a piece of glass in front of us. Such mistakes will remind us to walk more safely and freely at the same or a similar place next time. To absorb the human mistake correction wisdom, we propose a novel glass segmentation network to detect transparent glass, dubbed GlassSegNet. Motivated by this human behavior, GlassSegNet utilizes two key stages: the identification stage (IS) and the correction stage (CS). The IS is designed to simulate the detection procedure of human recognition for identifying transparent glass by global context and edge information. The CS then progressively refines the coarse prediction by correcting mistake regions based on gained experience. Extensive experiments show clear improvements of our GlassSegNet over thirty-four state-of-the-art methods on three benchmark datasets.
翻译:回想一下我们在一个不熟悉的商场的经历。我们可能会错误地认为我们面前存在或不存在一块玻璃。这样的错误会提醒我们下一次在相同或类似的地方更加安全自由地走路。为了吸收人类矫正错误的智慧,我们提出了一种新的玻璃分割网络来检测透明玻璃,称为GlassSegNet。受此人类行为的启发,GlassSegNet利用了两个关键阶段:识别阶段(IS)和矫正阶段(CS)。IS旨在通过全局上下文和边缘信息模拟人类识别透明玻璃的检测过程。然后CS根据获得的经验从矫正错误区域开始逐步细化粗略预测。广泛的实验表明,我们的GlassSegNet在三个基准数据集上明显优于34种最先进的方法。