Remote multi-object detection based on bounding box field

Jin Liu, Ronghao Li, Yongjian Gao
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Abstract

This paper proposes a new irregular remote sensing object detection algorithm that different from the ROI or rotating BOX obtained by traditional one. The architecture is designed to jointly learn four bounding box corner points and their association via two branches of the same sequential prediction process. The algorithm predicts four key points of the object and their associated connection, Bounding Box Fields(BBF) via convolutional neural network(CNN), and thus obtains the detail spatial distribution of the objects. In order to improve the positioning accuracy of the key points, network architecture reduced Receptive Field from large to small stage by stage. It has achieved ROI free finally. In this method, the object detection problem is framed as CNN convolution point detection and bounding box field detection, it achieved the one stage object detection with high precision and high speed. We verified the effectiveness and efficiency of the algorithm through experiments, which proved that the new data structure could locate the object attitude and spatial direction more accurately in real time with strong practicability.
基于边界框场的远程多目标检测
本文提出了一种不同于传统的ROI或旋转BOX的不规则遥感目标检测算法。该体系结构旨在通过同一顺序预测过程的两个分支共同学习四个边界盒角点及其关联。该算法通过卷积神经网络(CNN)预测目标的四个关键点及其关联的边界框场(Bounding Box Fields, BBF),从而获得目标的详细空间分布。为了提高关键点的定位精度,网络架构将感受野由大到小逐步缩小。最终实现了无ROI。该方法将目标检测问题框架为CNN卷积点检测和边界盒场检测,实现了高精度、高速的单阶段目标检测。通过实验验证了算法的有效性和效率,证明了新的数据结构能够更准确地实时定位目标姿态和空间方向,具有较强的实用性。
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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