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Feature-Fused SSD: Fast Detection for Small Objects

机译:功能融合型SSD:快速检测小物体

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Small objects detection is a challenging task in computer vision due to its limited resolution and information. In order to solve this problem, the majority of existing methods sacrifice speed for improvement in accuracy. In this paper, we aim to detect small objects at a fast speed, using the best object detector Single Shot Multibox Detector (SSD) with respect to accuracy-vs-speed trade-off as base architecture. We propose a multi-level feature fusion method for introducing contextual information in SSD, in order to improve the accuracy for small objects. In detailed fusion operation, we design two feature fusion modules, concatenation module and element-sum module, different in the way of adding contextual information. Experimental results show that these two fusion modules obtain higher mAP on PASCAL VOC2007 than baseline SSD by 1.6 and 1.7 points respectively, especially with 2-3 points improvement on some small objects categories. The testing speed of them is 43 and 40 FPS respectively, superior to the state of the art Deconvolutional single shot detector (DSSD) by 29.4 and 26.4 FPS.
机译:小物体检测由于其有限的分辨率和信息而在计算机视觉中是一项具有挑战性的任务。为了解决该问题,大多数现有方法为了提高精度而牺牲了速度。在本文中,我们旨在以相对于速度与速度的权衡为基础的最佳对象检测器Single Shot Multibox Detector(SSD)来快速检测小对象。为了提高小对象的精度,我们提出了一种在SSD中引入上下文信息的多级特征融合方法。在详细的融合操作中,我们设计了两个特征融合模块,即串联模块和元素和模块,它们在添加上下文信息的方式上有所不同。实验结果表明,这两种融合模块在PASCAL VOC2007上获得的mAP分别比基准SSD高1.6和1.7点,特别是在某些小物体类别上提高了2-3点。它们的测试速度分别为43 FPS和40 FPS,比现有的反卷积单发检测器(DSSD)高29.4 FPS和26.4 FPS。

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