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A Lightweight High-Resolution Representation Backbone For Real-Time Keypoint-Based Object Detection

机译:用于基于关键点的实时对象检测的轻量级高分辨率表示骨干网

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The keypoint based detectors are a relatively new object detection mechanism, avoiding the complicated computation related to anchor box and achieving state-of-the-art accuracy. However, inference speed is a major drawback of these detectors because of the heavy backbone network. In this paper, we design a novel lightweight backbone named DNet for keypoint-based detection and propose a real-time object detection network. In the backbone part, DNet is able to maintain high-resolution feature maps throughout the process and gradually extract and integrate features across scales. In the detection part, we detect a center keypoint and a pair of corners to predict the bounding boxes, and completely avoid the complicated computation related to anchor boxes. Compared with state-of-the-art real-time detectors, our network achieves superior performance with 30.0% AP on COCO benchmark at 21. 5ms. In addition, the experimental results show that our network is capable of running real-time on embedded devices.
机译:基于关键点的检测器是一种相对较新的对象检测机制,避免了与锚框相关的复杂计算,并实现了最新的准确性。然而,由于笨重的主干网络,推理速度是这些检测器的主要缺点。在本文中,我们设计了一种新颖的轻量级骨干网DNet,用于基于关键点的检测,并提出了一种实时对象检测网络。在骨干部分,DNet能够在整个过程中维护高分辨率特征图,并逐步提取和整合各个比例尺的特征。在检测部分,我们检测中心关键点和一对角以预测边界框,并完全避免了与锚框相关的复杂计算。与最先进的实时检测器相比,我们的网络以21. 5ms的COCO基准达到30.0%的AP,实现了卓越的性能。此外,实验结果表明,我们的网络能够在嵌入式设备上实时运行。

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