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RSS FeedsRemote Sensing, Vol. 10, Pages 776: SAR Target Recognition in Large Scene Images via Region-Based Convolutional Neural Networks (Remote Sensing)

 
 

24 may 2018 18:00:08

 
Remote Sensing, Vol. 10, Pages 776: SAR Target Recognition in Large Scene Images via Region-Based Convolutional Neural Networks (Remote Sensing)
 


In this paper, a new Region-based Convolutional Neural Networks (RCNN) method is proposed for target recognition in large scene synthetic aperture radar (SAR) images. To locate and recognize the targets in SAR images, there are three steps in the traditional procedure: detection, discrimination, classification and recognition. Each step is supposed to provide optimal processing results for the next step, but this is difficult to implement in real-life applications because of speckle noise and inefficient connection among these procedures. To solve this problem, the RCNN is applied to large scene SAR target recognition, which can detect the objects while recognizing their classes based on its regression method and the sharing network structure. However, size of the input images to RCNN is limited so that the classification could be accomplished, which leads to a problem that RCNN is not able to handle the large scene SAR images directly. Thus, before the RCNN, a fast sliding method is proposed to segment the scene image into sub-images with suitable size and avoid dividing targets into different sub-images. After the RCNN, candidate regions on different slices are predicted. To locate targets on large scene SAR images from these candidate regions on small slices, the Non-maximum Suppression between Regions (NMSR) is proposed, which could find the most proper candidate region among all the overlapped regions. Experiments on 1476 × 1784 simulated MSTAR images of simple scenes and complex scenes show that the proposed method can recognize all targets with the best accuracy and fastest speed, and outperform the other methods, such as constant false alarm rate (CFAR) detector + support vector machine (SVM), Visual Attention+SVM, and Sliding-RCNN.


 
46 viewsCategory: Geology, Physics
 
Remote Sensing, Vol. 10, Pages 777: Characterizing Tropical Forest Cover Loss Using Dense Sentinel-1 Data and Active Fire Alerts (Remote Sensing)
Remote Sensing, Vol. 10, Pages 775: Machine Learning Automatic Model Selection Algorithm for Oceanic Chlorophyll-a Content Retrieval (Remote Sensing)
 
 
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