基于短连接的深度监督显著目标检测

Qibin Hou, Ming-Ming Cheng, Xiaowei Hu, A. Borji, Z. Tu, Philip H. S. Torr
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引用次数: 125

摘要

近年来,显著性检测取得了长足的进展,主要得益于卷积神经网络(cnn)的爆炸性发展。近年来发展起来的语义分割和显著性检测算法大多是基于全卷积神经网络的。与没有明确处理尺度空间问题的通用FCN模型相比,仍有很大的改进空间。整体嵌套边缘检测器(HED)为边缘和边界检测提供了一种具有深度监督的跳跃层结构,但其在显著性检测上的性能提升并不明显。在本文中,我们提出了一种新的显著性方法,将短连接引入到HED体系结构中的跨层结构中。我们的框架在每一层都提供了丰富的多尺度特征图,这是执行片段检测所迫切需要的属性。我们的方法在5个广泛测试的显著目标检测基准上产生了最先进的结果,与现有算法相比,在效率(每张图像0.08秒)、有效性和简单性方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deeply Supervised Salient Object Detection with Short Connections
Recent progress on saliency detection is substantial, benefiting mostly from the explosive development of Convolutional Neural Networks (CNNs). Semantic segmentation and saliency detection algorithms developed lately have been mostly based on Fully Convolutional Neural Networks (FCNs). There is still a large room for improvement over the generic FCN models that do not explicitly deal with the scale-space problem. Holisitcally-Nested Edge Detector (HED) provides a skip-layer structure with deep supervision for edge and boundary detection, but the performance gain of HED on saliency detection is not obvious. In this paper, we propose a new saliency method by introducing short connections to the skip-layer structures within the HED architecture. Our framework provides rich multi-scale feature maps at each layer, a property that is critically needed to perform segment detection. Our method produces state-of-the-art results on 5 widely tested salient object detection benchmarks, with advantages in terms of efficiency (0.08 seconds per image), effectiveness, and simplicity over the existing algorithms.
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