基于超像素重构的多尺度高光谱图像分类方法

Multiscale Hyperspectral Image Classification Method Based on Superpixel Reconstruction

  • 摘要: 为了进一步提升高光谱图像的分类精度,提出了一种基于超像素重构的多尺度高光谱图像分类方法。该方法利用像素间的空间相似性,更有效地提取高光谱数据的低维特征。首先,为了充分捕捉图像中的多尺度空间特征,采用超像素分割技术提取同质区域,生成多个尺度的分割结果。在每个尺度的超像素区域内,利用属于同一超像素块的相邻像素建立空间邻域重构模型。接着,使用基于超像素的主成分分析对不同尺度的超像素区域进行降维。分类过程中,使用支持向量机针对每个尺度的低维特征进行训练,然后通过多数投票机制融合,充分利用不同尺度的信息。为了验证所提算法的性能,在3个真实数据集上进行实验分析,证明了该方法的优越性。

     

    Abstract: To further improve the classification accuracy of hyperspectral images, a multiscale hyperspectral image classification method based on superpixel reconstruction is proposed. This method utilizes the spatial similarity between pixels to extract low-dimensional features of hyperspectral data more effectively. First, to fully capture the multiscale spatial features in the image, superpixel segmentation technology was used to extract the homogeneous region and generate multiscale segmentation results. In the superpixel region of each scale, the spatial neighborhood reconstruction model was established using adjacent pixels that belong to the same superpixel block. Then, principal component analysis based on superpixels was used to reduce the dimensions of different scale superpixel regions. In the classification process, the support vector machine is used to train the low-dimensional features of each scale, and then the majority voting mechanism is fused to make full use of the information of different scales. The experimental analysis on three real datasets proved the superiority of the proposed method.

     

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