A Multi-Scale Detector Based on Attention Mechanism

Lukuan Zhou, Wei Wang, Qiang Wang, Biyun Sheng, Wankou Yang
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Abstract

After the two-stage detector is first introduced and popularized by R-CNN, two-stage detectors have achieved great performance, but there are still many problems. 1. FPN tries to use different level features to deal with the scale variance problem in object detection, but lacks the screening of information, leading to important information not protruding and introducing interference; 2. Although CNN realizes the automation of feature extraction, there are still many components that need manual design, such as loss functions, etc., how to choose suitable loss function for different stages are still to be explored. To overcome these issues, we introduce attention mechanism to FPN and propose a more effective feature fusion method for it. Besides, we explore the selection criteria about choosing loss function in each stage and find combining Smooth L1 loss function with the new loss function focused on inliers such as Balanced Smooth L1 yield better results than only using a single loss function. Based on them, we propose Attention Feature Pyramid Networks(AFPN) Detector and train with different loss functions. Experiments show that our method achieves 1.1 points AP improvement than FPN Faster R-CNN on MS-COCO.
基于注意机制的多尺度检测器
两级检测器首次由R-CNN引入并推广后,两级检测器取得了很大的性能,但仍然存在很多问题。1. FPN试图利用不同层次的特征来处理目标检测中的尺度方差问题,但缺乏对信息的筛选,导致重要信息不突出,引入干扰;2. 虽然CNN实现了特征提取的自动化,但仍有许多组件需要人工设计,如损失函数等,如何选择适合不同阶段的损失函数仍有待探索。为了克服这些问题,我们将注意力机制引入到FPN中,并提出了一种更有效的特征融合方法。此外,我们探索了每个阶段选择损失函数的选择标准,并发现将光滑L1损失函数与专注于内层的新损失函数(如平衡光滑L1)结合使用比仅使用单个损失函数效果更好。在此基础上,提出了注意特征金字塔网络(AFPN)检测器,并使用不同的损失函数进行训练。实验表明,该方法在MS-COCO上比FPN Faster R-CNN的AP提高了1.1分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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