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Building Detection in Aerial Images Based on Watershed and Visual Attention Feature Descriptors

机译:基于流域和视觉注意力特征描述符的空中图像中的建筑物检测

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This paper investigates a novel solution for the recognition of objects of interest in aerial images. The solution builds on a combination of algorithms inspired from the human visual system with classical and modern algorithms. The goal is to achieve intelligent and powerful approaches that allow for fast and automatic treatment of complex images. The methodology that is proposed innovatively combines a variation of-the classical watershed segmentation algorithm with a series of feature descriptors derived from a computational model of visual attention. The feature descriptors are tuned with a machine learning approach for the task of detecting buildings in aerial images. The experimental evaluation that is conducted demonstrates that objects recognition with features derived from human visual attention performs better than when only traditional features, such as statistical texture descriptors and shape descriptors, are used. As well, the proposed solution obtains better classification rates than those reported on image processing-based recognition of buildings in the remote sensing literature.
机译:本文调查了识别空中图像感兴趣对象的新解决方案。该解决方案构建了从具有经典和现代算法的人类视觉系统的算法组合。目标是实现智能和强大的方法,允许快速自动处理复杂图像。创新地提出的方法与经典流域分割算法的变化相结合,这是一系列从视觉注意的计算模型导出的一系列特征描述符。特征描述符通过机器学习方法进行调整,用于检测航空图像中的建筑物的任务。所进行的实验评估表明,对象识别与人类视觉关注的特征更好地使用,而不是仅使用诸如统计纹理描述符和形状描述符的传统特征。同样,所提出的解决方案比在遥感文献中的建筑物的基于建筑物的识别上报告的那些获得更好的分类率。

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