更具竞争力的实例分割特征提取网络

Ying Xu, Huixiang Qiao, Yongping Zhang, Lei Lei, Tuozhong Yao
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引用次数: 0

摘要

实例分割在自动驾驶、视频安防等领域有着广泛的应用。Mask R-CNN引入了特征金字塔网络(Feature Pyramid Networks, FPN),是一种简单有效的实例分割框架。但是,它仍然存在误检、漏检、实例分割精度低等问题。针对这些问题,我们对Mask R-CNN进行了相应的改进。在此基础上提出了一种更具竞争力的特征提取模块,我们称之为挤压-激励特征模型。压缩激励特征模型在FPN输出层进行自底向上的特征融合,使底层特征更容易传播。特别地,它采用了一个并发的空间和通道挤压激励模块(scSE)。scSE的应用提高了特征通道的自适应性,聚合了相关空间信息,大大减少了误检和漏检。此外,在最后的分割阶段,空间挤压和激励模块(sSE)用于细化分割。实验结果表明,在MS COCO数据集上,检测和实例分割都取得了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
More Competitive Feature Extraction Network for Instance Segmentation
Instance segmentation has a wide range of applications in autonomous driving, video security and so on. Mask R-CNN, which introduces Feature Pyramid Networks (FPN), is a simple and effective instance segmentation framework. However, it still has some problems such as false detection, missed detection, and low instance segmentation accuracy. To address such problems, we make corresponding improvements on Mask R-CNN. A more competitive feature extraction module, which we call Squeeze-and-Excitation feature model, is thereupon proposed. Squeeze-and-Excitation feature model performs a bottom-up feature fusion on the FPN output layer, making the underlying features easier to propagate. In particular, a concurrent spatial and channel Squeeze-and-Excitation module (scSE) is employed in it. The application of scSE can improve the adaptability of the feature channel and aggregate relevant spatial information, which greatly reduce false detection and missed detection. In addition, during the final segmentation phase, a spatial Squeeze-and-Excitation module (sSE) is used to refine the segmentation. The experimental result reveals that, both detection and instance segmentation have achieved significant improvements in the MS COCO dataset.
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