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A scale- and orientation-adaptive extension of Local Binary Patterns for texture classification

机译:局部二值模式的比例和方向自适应扩展用于纹理分类

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摘要

Local Binary Patterns (LBPs) have been used in a wide range of texture classification scenarios and have proven to provide a highly discriminative feature representation. A major limitation of LBP is its sensitivity to affine transformations. In this work, we present a scale- and rotation-invariant computation of LBP. Rotation-invariance is achieved by explicit alignment of features at the extraction level, using a robust estimate of global orientation. Scale-adapted features are computed in reference to the estimated scale of an image, based on the distribution of scale normalized Laplacian responses in a scale-space representation. Intrinsic-scale-adaption is performed to compute features, independent of the intrinsic texture scale, leading to a significantly increased discriminative power for a large amount of texture classes. In a final step, the rotation- and scale-invariant features are combined in a multi-resolution representation, which improves the classification accuracy in texture classification scenarios with scaling and rotation significantly.
机译:局部二值模式(LBP)已在各种纹理分类方案中使用,并已被证明可提供高度区分性的特征表示。 LBP的主要局限性是它对仿射变换的敏感性。在这项工作中,我们提出了LBP的比例和旋转不变计算。旋转不变性是通过使用全局方向的可​​靠估计在提取级别上显式对齐特征来实现的。基于比例尺标准化表示中的尺寸归一化拉普拉斯响应的分布,参考图像的估计比例来计算适合于比例的特征。执行本征尺度自适应以独立于本征纹理尺度来计算特征,从而导致大量纹理类别的判别力显着提高。在最后一步中,将旋转不变和缩放不变特征组合为多分辨率表示形式,从而显着提高了缩放和旋转的纹理分类场景中的分类精度。

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