Although deep models have greatly improved the accuracy and robustness of image segmentation, obtaining segmentation results with highly accurate boundaries and fine structures is still a challenging problem. In this paper, we propose a simple yet powerful Boundary-Aware Segmentation Network (BASNet), which comprises a predict-refine architecture and a hybrid loss, for highly accurate image segmentation. The predict-refine architecture consists of a densely supervised encoder-decoder network and a residual refinement module, which are respectively used to predict and refine a segmentation probability map. The hybrid loss is a combination of the binary cross entropy, structural similarity and intersection-over-union losses, which guide the network to learn three-level (ie, pixel-, patch- and map- level) hierarchy representations. We evaluate our BASNet on two reverse tasks including salient object segmentation, camouflaged object segmentation, showing that it achieves very competitive performance with sharp segmentation boundaries. Importantly, BASNet runs at over 70 fps on a single GPU which benefits many potential real applications. Based on BASNet, we further developed two (close to) commercial applications: AR COPY & PASTE, in which BASNet is integrated with augmented reality for "COPYING" and "PASTING" real-world objects, and OBJECT CUT, which is a web-based tool for automatic object background removal. Both applications have already drawn huge amount of attention and have important real-world impacts. The code and two applications will be publicly available at: https://github.com/NathanUA/BASNet.
翻译:虽然深层模型大大提高了图像分割的准确性和稳健性,但获得具有高度准确的边界和精细结构的分解结果仍然是一个挑战性的问题。在本文件中,我们提议建立一个简单而有力的边界-软件分解网络(BASNet),其中包括一个预测-反应结构以及一种混合损失,以便进行非常准确的图像分解。预测-反应结构包括一个密集监管的编码器-解码器网络和一个剩余精细模块,分别用来预测和完善一个分解概率图。混合损失是将二进制的跨交错点、结构相似性和交叉式联盟损失结合起来的一个问题。在本文中,我们建议建立一个简单而有力的边界-软件分解网络(BASNet)网络学习三级(i、像素-、补丁-和地图-层次-层次-层次)的分解图层结构图。我们评估我们的边界-反向网络结构,包括突出的物体分解、迷彩色的物体分解分解器网络和微分解仪的功能。重要的是,BASNet的注意力集中在一个单一的GPU上的许多潜在的实际应用程序。基于BASNet,我们在BASNet上,我们进一步开发了两部-C-del-del-del-del-QAS-st-st-st-st-st-st-st-stal-stal-stal-stal-stal-stal-stal-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-stal-st-st-stal-stal-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-stal-stal-stal-st-st-st-st-st-stal-st-st-st-st-st-stal-stal-stal-stal-stal-stal-stal-stal-stal-stal-stal-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-st-