Two-stage Airplane Detection with NMS Filtering in Remote Sensing Images

Yucheng Song, J. Tian
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Abstract

In the past few years, object detection based on deep learning have attracted attention from more and more organizations and researchers. Compared to one-stage object detection methods, two-stage methods would display a better performance of accuracy and precision. As airplane detection is a basic task in remote sensing images, we propose an airplane-detection method based Faster R-CNN and Feature Pyramid Networks (FPN), with Non-maximum Suppression (NMS) postprocessing. The Faster R-CNN is the most widely used two-stage detection framework, and is still the mainstream box-detection method in many famous detection research platforms like Detectron2 and MMDetection. For the various sizes of airplanes objects, the FPN is used as an excellent technique in recognition systems for detecting objects at different scales. Due to the prominent similarity between different classes of airplanes, the naive two-stage method would yield many duplicate boxes of multiple airplane classes for one object. To improve the recall and precision of the detection model, an NMS Filtering is proposed to prevent the phenomenon of multiple duplicate boxes for one object. The experiment showed that our method is able to accomplish the task in remote sensing for the detection and recognition of airplanes in 24 different classes including helicopter and wing aircrafts, and the NMS postprocessing would have a positive influence on improving the recall and mean average precision (mAP) metrics. The future work would be expanded on improving the precision of classification task.
基于NMS滤波的两级飞机遥感图像检测
在过去的几年里,基于深度学习的目标检测受到了越来越多的组织和研究人员的关注。与单阶段目标检测方法相比,两阶段目标检测方法具有更好的准确性和精密度。由于飞机检测是遥感图像的一项基本任务,我们提出了一种基于Faster R-CNN和特征金字塔网络(FPN)的飞机检测方法,并进行了非最大抑制(NMS)后处理。Faster R-CNN是应用最广泛的两阶段检测框架,在Detectron2、MMDetection等众多著名的检测研究平台中仍是主流的箱检方法。对于不同尺寸的飞机目标,FPN是识别系统中检测不同尺度目标的一种优秀技术。由于不同类别的飞机之间具有显著的相似性,朴素的两阶段方法会对一个对象产生多个飞机类别的重复框。为了提高检测模型的查全率和查准率,提出了一种NMS过滤方法来防止一个对象出现多个重复框的现象。实验表明,该方法能够完成包括直升机和翼机在内的24种不同类别飞机的遥感检测和识别任务,并且NMS后处理对提高查全率和平均精度(mAP)指标有积极的影响。今后的工作将在提高分类任务的精度方面展开。
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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