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Improved Person Detection on Omnidirectional Images with Non-maxima Supression

机译:改进了具有非最大抑制的全向图像的人检测

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We propose a person detector on omnidirectional images, an accurate method to generate minimal enclosing rectangles of persons. The basic idea is to adapt the qualitative detection performance of a convolutional neural network based method, namely YOLOv2 to fish-eye images. The design of our approach picks up the idea of a state-of-the-art object detector and highly overlapping areas of images with their regions of interests. This overlap reduces the number of false negatives. Based on the raw bounding boxes of the detector we fine-tuned overlapping bounding boxes by three approaches: the non-maximum suppression, the soft non-maximum suppression and the soft non-maximum suppression with Gaussian smoothing. The evaluation was done on the PIROPO database and an own annotated Flat dataset, supplemented with bounding boxes on omnidirectional images. We achieve an average precision of 64.4% with YOLOv2 for the class person on PIROPO and 77.6% on Flat. For this purpose we fine-tuned the soft non-maximum suppression with Gaussian smoothing.
机译:我们向全向图像提出一个人检测器,一种准确的方法,可以产生最小的人的封闭矩形。基本思想是调整基于卷积神经网络的方法的定性检测性能,即yolov2到鱼眼图像。我们的方法的设计拾取了最先进的物体检测器和具有其兴趣区域的图像高度重叠区域的想法。此重叠减少了错误底片的数量。基于检测器的原始边界框,我们通过三种方法进行微调重叠边界盒:非最大抑制,软性非最大抑制和高斯平滑的软不最大抑制。评估是在Piropo数据库和自己的带注释的平面数据集上完成的,补充有全向图像的边界框。我们在Piropo上的班级人员达到平均精度为64.4%,平面为77.6%。为此目的,我们微调了高斯平滑的软不最大抑制。

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