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Locality-Constrained Linear Coding with Spatial Pyramid Matching for SAR Image Classification

机译:具有用于SAR图像分类的空间金字塔匹配的位置约束线性编码

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We propose a linear spatial pyramid matching using locality-constraint linear coding for SAR image classification based on MSTAR database. Recently, works have little consideration about targets' randomly distributed poses when applying sparse coding in coding scheme. We do the preprocessing of pose estimation to generate over-complete codebook and therefore reduce reconstruction error. SIFT descriptors extracted from images are projected into its local-coordinate system by Locality-constrained linear coding instead of sparse coding. Locality constraint ensures similar patches will share similar codes. The codes are then pooled within each sub-region partitioned according to spatial pyramid and concatenated to form the final feature vectors. We use max-pooling which is more salient and robust to local translation. With linear SVM classifier, the proposed approach achieves better performance than traditional ScSPM method.
机译:我们使用基于MSTAR数据库的SAR图像分类的位置约束线性编码提出线性空间金字塔匹配。最近,在编码方案中应用稀疏编码时,作品几乎没有考虑到目标随机分布的姿势。我们做了姿势估计的预处理,以产生完整的码本,从而减少重建错误。从图像中提取的SIFT描述符被当地约束的线性编码而不是稀疏编码投影到其本地坐标系中。位置约束确保类似的补丁将共享类似的代码。然后将该代码汇集在根据空间金字塔和连接以形成最终特征向量的每个子区域内。我们使用最大限度的池,这更加突出和鲁棒到本地翻译。利用线性SVM分类器,所提出的方法比传统的SCSPM方法更好地实现性能。

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