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Mumford-Shah Model Based Man-Made Objects Detection from Aerial Images

机译:基于Mumford-Shah模型的航空图像人造目标检测

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摘要

In this paper, a novel method for detecting man-made objects in aerial images is described. The method is based on a simplified Mumford-Shah model. It applies fractal error metric, developed by Cooper, et al and additional constraint, a texture edge descriptor which is defined by DCT (Discrete Cosine Transform) coefficients on the image, to get a preferable segmentation. Man-made objects and natural areas are optimally differentiated by evolving the partial differential equation using this Mumford-Shah model. The method artfully avoids selecting a threshold to separate the fractal error image, since an improper threshold may result large segmentation errors. Experiments of the segmentation show that the proposed method is efficient.
机译:本文介绍了一种在航空影像中检测人造物体的新方法。该方法基于简化的Mumford-Shah模型。它应用了Cooper等人开发的分形误差度量和附加约束(通过图像上的DCT(离散余弦变换)系数定义的纹理边缘描述符)来获得较好的分割效果。通过使用此Mumford-Shah模型发展偏微分方程,可以对人造物体和自然区域进行最佳区分。该方法巧妙地避免了选择阈值来分离分形误差图像,因为不合适的阈值可能会导致较大的分割误差。分割实验表明,该方法是有效的。

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