基于显著区提取的高分辨率遥感影像油库检测

Chaoyang Li, H. Huo, T. Fang
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引用次数: 2

摘要

传统的油库检测方法通常采用霍夫变换和模板匹配,检测率较低且难以实现。本文提出了一种高效的两步检测框架,用于高分辨率遥感图像中油库的检测。第一阶段,采用LC显著性模型检测显著区域,对油库的突出显示效果较好;第二阶段,根据目标的特殊属性,通过去除不相关的显著区域,从这些显著区域中提取任务相关目标。根据油库的最终形状、面积和分布,采用图像阈值分割和基于图的聚类方法对油库进行检测,具有较好的准确率和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Oil depots detection from high resolution remote sensing images based on salient region extraction
The traditional methods of detecting oil depots usually use Hough transform and template matching, which often have lower detection rates and are difficult to implement. An efficient two-step detection framework is proposed in this paper to detect oil depots in high resolution remote sensing images. In the first stage, LC saliency model is used to detect the salient regions and shows a good performance on highlighting oil depots. In the second stage, task related targets from these salient regions are extracted by removing the irrelevant salient areas according to the special properties of the targets. According to the final shape, the area and distribution of oil depots, using image threshold segmentation and the graph-based clustering procedure, oil depots are detected with fairly good accuracy and efficiency.
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