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引用次数: 2

摘要

目标检测是遥感图像分析中的一个基本问题。多类分类器通常用于目标检测。而单类分类器只需要正类的训练样本,在特定目标提取方面优势明显。基于一类分类方法,研究了遥感图像中河流目标的检测问题。目标检测过程分为粗筛选和细检测两个阶段。在筛选阶段,基于一类分类排除大部分非靶区。精细检测阶段从目标候选区域提取复杂特征,采用特征匹配方法检测河流目标。该方法基于单类分类,降低了目标检测的时间复杂度。
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One-class classification based river detection in remote sensing image
Target detection is a fundamental problem in remote sensing images analysis. Multi-class classifiers are usually used in target detection. However, one-class classifier requires only the training samples of positive class, which has obvious advantages in specific target extraction. Based on one-class classification, the river target detection in remote sensing image is studied in this paper. The target detection process is divided into two phases: coarse screening and fine detection. In the screening phase, most non-target areas are excluded based on one-class classification. The fine detection phase extracts complex features from the target candidate regions and detects the river target by feature matching method. Based on one-class classification, the proposed method reduces the time complexity in target detection.
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