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RAPID TARGET DETECTION IN HIGH RESOLUTION REMOTE SENSING IMAGES USING YOLO MODEL

机译:YOLO模型的高分辨率遥感影像快速目标检测

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Object detection in high resolution remote sensing images is a fundamental and challenging problem in the field of remote sensing imagery analysis for civil and military application due to the complex neighboring environments, which can cause the recognition algorithms to mistake irrelevant ground objects for target objects. Deep Convolution Neural Network(DCNN) is the hotspot in object detection for its powerful ability of feature extraction and has achieved state-of-the-art results in Computer Vision. Common pipeline of object detection based on DCNN consists of region proposal, CNN feature extraction, region classification and post processing. YOLO model frames object detection as a regression problem, using a single CNN predicts bounding boxes and class probabilities in an end-to-end way and make the predict faster. In this paper, a YOLO based model is used for object detection in high resolution sensing images. The experiments on NWPU VHR-10 dataset and our airport/airplane dataset gain from GoogleEarth show that, compare with the common pipeline, the proposed model speeds up the detection process and have good accuracy.
机译:由于周围环境的复杂性,高分辨率遥感影像中的目标检测是民用和军事应用遥感影像分析领域中的一个基本且具有挑战性的问题,这可能导致识别算法将无关的地面物体误认为目标物体。深度卷积神经网络(DCNN)以其强大的特征提取能力而成为对象检测的热点,并已在Computer Vision中取得了最新的成果。基于DCNN的目标检测通用流水线包括区域提议,CNN特征提取,区域分类和后处理。 YOLO模型使用单个CNN以端到端的方式预测边界框和类概率,从而将对象检测作为回归问题进行框架化,并加快了预测速度。在本文中,基于YOLO的模型用于高分辨率感测图像中的目标检测。对NWPU VHR-10数据集和我们从GoogleEarth获得的机场/飞机数据集的实验表明,与普通管道相比,该模型加快了检测过程,并具有良好的准确性。

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