ARPD: Anchor-free Rotation-aware People Detection using Topview Fisheye Camera

Quan Minh Nguyen, Bang Le Van, Can Nguyen, Anh Le, Viet Dung Nguyen
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引用次数: 3

Abstract

People detection in top-view, fish-eye images is challenging as people in fish-eye images often appear in arbitrary directions and are distorted differently. Due to this unique radial geometry, axis-aligned people detectors often work poorly on fish-eye frames. Recent works account for this variability by modifying existing anchor-based detectors or relying on complex pre/post-processing. Anchor-based methods spread a set of pre-defined bounding boxes on the input image, most of which are invalid. In addition to being inefficient, this approach could lead to a significant imbalance between the positive and negative anchor boxes. In this work, we propose ARPD, a single-stage anchor-free fully convolutional network to detect arbitrarily rotated people in fish-eye images. Our network uses keypoint estimation to find the center point of each object and regress the object’s other properties directly. To capture the various orientation of people in fish-eye cameras, in addition to the center and size, ARPD also predicts the angle of each bounding box. We also propose a periodic loss function that accounts for angle periodicity and relieves the difficulty of learning small-angle oscillations. Experimental results show that our method competes favorably with state-of-the-art algorithms while running significantly faster.
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ARPD:使用Topview鱼眼相机的无锚旋转感知人物检测
俯视图鱼眼图像中的人物检测具有挑战性,因为鱼眼图像中的人物往往出现在任意方向并且扭曲程度不同。由于这种独特的径向几何形状,轴线对准的人检测器通常在鱼眼框架上工作得很差。最近的研究通过修改现有的基于锚点的检测器或依赖复杂的预处理/后处理来解释这种可变性。基于锚点的方法在输入图像上散布一组预定义的边界框,其中大多数是无效的。除了效率低下之外,这种方法还可能导致正锚框和负锚框之间的严重失衡。在这项工作中,我们提出了ARPD,一种单阶段无锚点的全卷积网络,用于检测鱼眼图像中任意旋转的人。我们的网络使用关键点估计来找到每个对象的中心点,并直接回归对象的其他属性。为了在鱼眼相机中捕捉人的各种方向,除了中心和大小,ARPD还预测了每个边界框的角度。我们还提出了一个考虑角度周期性的周期损失函数,减轻了学习小角度振荡的困难。实验结果表明,我们的方法与最先进的算法相比具有优势,同时运行速度显著提高。
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Geometry-Based Person Re-Identification in Fisheye Stereo On the Performance of Crowd-Specific Detectors in Multi-Pedestrian Tracking ARPD: Anchor-free Rotation-aware People Detection using Topview Fisheye Camera A Fire Detection Model Based on Tiny-YOLOv3 with Hyperparameters Improvement A Splittable DNN-Based Object Detector for Edge-Cloud Collaborative Real-Time Video Inference
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