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Local Competition-Based Superpixel Segmentation Algorithm in Remote Sensing

机译:基于局部竞争的遥感超像素分割算法

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Remote sensing technologies have been widely applied in urban environments’ monitoring, synthesis and modeling. Incorporating spatial information in perceptually coherent regions, superpixel-based approaches can effectively eliminate the “salt and pepper” phenomenon which is common in pixel-wise approaches. Compared with fixed-size windows, superpixels have adaptive sizes and shapes for different spatial structures. Moreover, superpixel-based algorithms can significantly improve computational efficiency owing to the greatly reduced number of image primitives. Hence, the superpixel algorithm, as a preprocessing technique, is more and more popularly used in remote sensing and many other fields. In this paper, we propose a superpixel segmentation algorithm called Superpixel Segmentation with Local Competition (SSLC), which utilizes a local competition mechanism to construct energy terms and label pixels. The local competition mechanism leads to energy terms locality and relativity, and thus, the proposed algorithm is less sensitive to the diversity of image content and scene layout. Consequently, SSLC could achieve consistent performance in different image regions. In addition, the Probability Density Function (PDF), which is estimated by Kernel Density Estimation (KDE) with the Gaussian kernel, is introduced to describe the color distribution of superpixels as a more sophisticated and accurate measure. To reduce computational complexity, a boundary optimization framework is introduced to only handle boundary pixels instead of the whole image. We conduct experiments to benchmark the proposed algorithm with the other state-of-the-art ones on the Berkeley Segmentation Dataset (BSD) and remote sensing images. Results demonstrate that the SSLC algorithm yields the best overall performance, while the computation time-efficiency is still competitive.
机译:遥感技术已广泛应用于城市环境的监视,综合和建模。基于超像素的方法将空间信息纳入感知上相干的区域,可以有效消除像素方法中常见的“盐和胡椒”现象。与固定大小的窗口相比,超像素具有适用于不同空间结构的自适应大小和形状。而且,由于图像基元的数量大大减少,基于超像素的算法可以显着提高计算效率。因此,超像素算法作为一种预处理技术,越来越广泛地用于遥感和许多其他领域。在本文中,我们提出了一种称为局部竞争的超像素分割(SSLC)的超像素分割算法,该算法利用局部竞争机制构造能量项和标记像素。局部竞争机制导致能量项的局部性和相对性,因此,该算法对图像内容和场景布局的多样性较不敏感。因此,SSLC可以在不同的图像区域中实现一致的性能。此外,还介绍了由内核密度估计(KDE)和高斯核估计的概率密度函数(PDF),以描述超像素的颜色分布,作为一种更复杂,更准确的方法。为了降低计算复杂度,引入了边界优化框架,仅处理边界像素而不是整个图像。我们进行了实验,以在伯克利分割数据集(BSD)和遥感图像上将其与其他最新技术进行比较,以此对基准算法进行基准测试。结果表明,SSLC算法可产生最佳的整体性能,而计算时间效率仍然具有竞争力。

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