IEEE Trans Image Process. 2016 Sep;25(9):4033-45. doi: 10.1109/TIP.2016.2577886. Epub 2016 Jun 7.
With the increase in the availability of high-resolution remote sensing imagery, classification is becoming an increasingly useful technique for providing a large area of detailed land-cover information by the use of these high-resolution images. High-resolution images have the characteristics of abundant geometric and detail information, which are beneficial to detailed classification. In order to make full use of these characteristics, a classification algorithm based on conditional random fields (CRFs) is presented in this paper. The proposed algorithm integrates spectral, spatial contextual, and spatial location cues by modeling the probabilistic potentials. The spectral cues modeled by the unary potentials can provide basic information for discriminating the various land-cover classes. The pairwise potentials consider the spatial contextual information by establishing the neighboring interactions between pixels to favor spatial smoothing. The spatial location cues are explicitly encoded in the higher order potentials. The higher order potentials consider the nonlocal range of the spatial location interactions between the target pixel and its nearest training samples. This can provide useful information for the classes that are easily confused with other land-cover types in the spectral appearance. The proposed algorithm integrates spectral, spatial contextual, and spatial location cues within a CRF framework to provide complementary information from varying perspectives, so that it can address the common problem of spectral variability in remote sensing images, which is directly reflected in the accuracy of each class and the average accuracy. The experimental results with three high-resolution images show the validity of the algorithm, compared with the other state-of-the-art classification algorithms.
随着高分辨率遥感图像的可用性不断增加,分类正成为一种越来越有用的技术,可以通过使用这些高分辨率图像提供大面积的详细土地覆盖信息。高分辨率图像具有丰富的几何和细节信息的特点,这有利于详细分类。为了充分利用这些特点,本文提出了一种基于条件随机场 (CRF) 的分类算法。所提出的算法通过对概率势进行建模,集成了光谱、空间上下文和空间位置线索。由一元势建模的光谱线索可以为区分各种土地覆盖类提供基本信息。二阶势通过建立像素之间的邻域相互作用来考虑空间上下文信息,有利于空间平滑。空间位置线索在高阶势中被明确编码。高阶势考虑了目标像素与其最近的训练样本之间的空间位置相互作用的非局部范围。这可以为那些在光谱外观上容易与其他土地覆盖类型混淆的类提供有用的信息。所提出的算法在 CRF 框架内集成了光谱、空间上下文和空间位置线索,从不同角度提供互补信息,从而可以解决遥感图像中光谱可变性的常见问题,这直接反映在每个类别的准确性和平均准确性上。与其他最先进的分类算法相比,使用三张高分辨率图像的实验结果验证了该算法的有效性。