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Class-Specific Anchor Based and Context-Guided Multi-Class Object Detection in High Resolution Remote Sensing Imagery with a Convolutional Neural Network

机译:基于类的基于锚和上下文引导的多级对象检测,具有卷积神经网络的高分辨率遥感图像

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摘要

In this paper, the problem of multi-scale geospatial object detection in High Resolution Remote Sensing Images (HRRSI) is tackled. The different flight heights, shooting angles and sizes of geographic objects in the HRRSI lead to large scale variance in geographic objects. The inappropriate anchor size to propose the objects and the indiscriminative ability of features for describing the objects are the main causes of missing detection and false detection in multi-scale geographic object detection. To address these challenges, we propose a class-specific anchor based and context-guided multi-class object detection method with a convolutional neural network (CNN), which can be divided into two parts: a class-specific anchor based region proposal network (RPN) and a discriminative feature with a context information classification network. A class-specific anchor block providing better initial values for RPN is proposed to generate the anchor of the most suitable scale for each category in order to increase the recall ratio. Meanwhile, we proposed to incorporate the context information into the original convolutional feature to improve the discriminative ability of the features and increase classification accuracy. Considering the quality of samples for classification, the soft filter is proposed to select effective boxes to improve the diversity of the samples for the classifier and avoid missing or false detection to some extent. We also introduced the focal loss in order to improve the classifier in classifying the hard samples. The proposed method is tested on a benchmark dataset of ten classes to prove the superiority. The proposed method outperforms some state-of-the-art methods with a mean average precision (mAP) of 90.4% and better detects the multi-scale objects, especially when objects show a minor shape change.
机译:在本文中,高分辨率遥感影像(HRRSI)多尺度地理空间对象检测的问题解决。在不同的飞行高度,拍摄角度和地理对象的大小在HRRSI导致大规模的变化在地理对象。不适当的锚尺寸提出的目的和特征用于描述对象是漏检和误检测在多尺度地理物体检测的主要原因的能力非歧视。为了应对这些挑战,我们提出了一个类特定的锚基和上下文引导多类物体检测方法使用卷积神经网络(CNN),其可被分为两个部分:一类特定的锚基于区域提案网络( RPN),并与上下文信息分类网的具有区分功能。甲类特定的锚块RPN提供更好的初始值被提出,以产生最合适的规模为每个类别的所述锚以增加召回率。同时,我们提出要结合上下文信息到原来的卷积功能,可以提高特征的甄别能力,并提高分类精度。考虑分类样品的质量,软滤波器提出了选择有效箱,以改善样品分类器的多样性,避免丢失或错误检测到一定程度。我们还推出了以提高分类的硬样品进行分类的焦点损失。该方法是在十个班级的基准数据集测试证明优越性。该方法优于状态的最先进的一些方法以90.4%的中值平均精度(MAP)和更好的检测多尺度的物体,特别是当对象表现出轻微的形状变化。

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