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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >A Fast Level Set Algorithm for Building Roof Recognition From High Spatial Resolution Panchromatic Images
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A Fast Level Set Algorithm for Building Roof Recognition From High Spatial Resolution Panchromatic Images

机译:基于高空间分辨率全色图像的建筑物屋顶识别的快速水平集算法

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摘要

Traditional level set methods usually require repeated tuning of parameters, which is quite laborious and thus limits their applications. In order to simplify the parameter setting, this letter presents a fast level set algorithm that is a further extension of the original Chan–Vese model. For computational efficiency, we start by initializing the level set function in our algorithm as a binary step function rather than the often used signed distance function. Then, we eliminate the curvature-based regularizing term that is commonly used in traditional models. Thus, we can use a relatively larger time step in the numerical scheme to expedite our model. Furthermore, to keep the evolving level curves smooth, we introduce a Gaussian kernel into our algorithm to convolve the updated level set function directly. Finally, compared with other existing popular algorithms in an experiment of recognizing building roofs from high spatial resolution panchromatic images, the proposed model is much more computationally efficient while object recognition performance is comparable to other popular models.
机译:传统的水平集方法通常需要重复调​​整参数,这非常费力,因此限制了它们的应用。为了简化参数设置,这封信介绍了一种快速级别设置算法,该算法是对原始Chan-Vese模型的进一步扩展。为了提高计算效率,我们首先将算法中的水平集函数初始化为二进制步长函数,而不是通常使用的有符号距离函数。然后,我们消除了传统模型中常用的基于曲率的正则化项。因此,我们可以在数值方案中使用相对较大的时间步,以加快模型的速度。此外,为了保持不断变化的水平曲线平滑,我们在算法中引入了高斯核,以直接对更新后的水平集函数进行卷积。最后,在从高空间分辨率全色图像识别建筑物屋顶的实验中,与其他现有流行算法相比,该模型的计算效率更高,而对象识别性能可与其他流行模型相提并论。

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