In this letter, a novel method for change detection is proposed using neighborhood structure correlation. Because structure features are insensitive to the intensity differences between bi-temporal images, we perform the correlation analysis on structure features rather than intensity information. First, we extract the structure feature maps by using multi-orientated gradient information. Then, the structure feature maps are used to obtain the Neighborhood Structural Correlation Image (NSCI), which can represent the context structure information. In addition, we introduce a measure named matching error which can be used to improve neighborhood information. Subsequently, a change detection model based on the random forest is constructed. The NSCI feature and matching error are used as the model inputs for training and prediction. Finally, the decision tree voting is used to produce the change detection result. To evaluate the performance of the proposed method, it was compared with three state-of-the-art change detection methods. The experimental results on two datasets demonstrated the effectiveness and robustness of the proposed method.
翻译:在这封信中,使用周边结构的关联性,提出了一种新的变化探测方法。由于结构特征对双时图像的强度差异不敏感,我们对结构特征而不是强度信息进行相关分析。首先,我们使用多方向梯度信息提取结构特征图。然后,结构特征图用于获取可代表上下文结构信息的邻里结构关联图像(NSCI)。此外,我们引入了名为匹配错误的测量方法,可用于改进周边信息。随后,根据随机森林构建了变化检测模型。利用了NSCI特征和匹配错误作为培训和预测的模型投入。最后,使用决策树表决来生成变化检测结果。为评估拟议方法的性能,将它与三种最先进的变化检测方法进行了比较。两个数据集的实验结果显示了拟议方法的有效性和稳健性。