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AN IMPROVED FEATURE EXTRACTION METHOD BASED ON CONTEXT FEATURES FOR MULTI-SPECTRAL REMOTE SENSING IMAGERY

机译:基于上下文特征的多光谱遥感影像特征提取改进方法

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Feature extraction methods of multi-spectral remote sensing images is of great significance for remote sensing image analysis, but it still faces some challenges. The ability of traditional feature extraction methods based on artificial features or shallow machine learning have some shortcomings and limitations. Recently, a series of proposed R-CNN networks, especially Faster R-CNN, have achieved excellent results in the field of target recognition. However, Faster R-CNN for multi-spectral imagery object detection has several drawbacks: (1) the object spectral information cannot be fully utilized in Faster R-CNN used to process RGB images; (2) the spatial semantic relationship information which could not be mined by Faster R-CNN among remote sensing image features can improve the feature extraction ability of the network; (3) objects occupy relatively few pixels because of the low resolution of multi-spectral images, and Faster R-CNN has poor detection performance for small objects. To address the above problems, we propose an effective and novel object detection method for multi-spectral images with small objects. First, we design a feature extractor by adopting a 3D convolution neural network which can simultaneously extract spectral information and spatial information. Secondly, an object relation module for mining context information is introduced into the network. Finally, in order to solve the problem of small targets, a multi-scale object proposal network for generating regions of objects from several intermediate layers is used. We conducted a set of controlled trials on the satellite imagery feature detection dataset released by Dstl on the Kaggle website and the results showed that our approach was very effective.
机译:多光谱遥感图像特征提取方法对遥感图像分析具有重要意义,但仍面临一些挑战。传统的基于人工特征或浅层机器学习的特征提取方法具有一定的缺陷和局限性。最近,一系列提出的R-CNN网络,尤其是Faster R-CNN,在目标识别领域取得了优异的成绩。然而,用于多光谱图像目标检测的Faster R-CNN具有几个缺点:(1)在用于处理RGB图像的Faster R-CNN中不能充分利用对象光谱信息; (2)Faster R-CNN无法挖掘遥感图像特征中的空间语义关系信息,可以提高网络的特征提取能力; (3)由于多光谱图像的分辨率低,物体占据相对较少的像素,而Faster R-CNN对小物体的检测性能较差。为了解决上述问题,我们提出了一种有效的新颖的小物体多光谱图像目标检测方法。首先,我们通过采用可以同时提取光谱信息和空间信息的3D卷积神经网络来设计特征提取器。其次,将用于挖掘上下文信息的对象关系模块引入网络。最后,为了解决小目标的问题,使用了一种用于从多个中间层生成目标区域的多尺度目标提议网络。我们对Dstl在Kaggle网站上发布的卫星图像特征检测数据集进行了一组对照试验,结果表明我们的方法非常有效。

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