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Scaling, rotation, and translation invariant image recognition using competing multiple subspaces

机译:使用竞争多个子空间的缩放,旋转和平移不变图像识别

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We propose a tolerant object recognition system under a combination of various transformations of an object image. The system realizes invariant recognition by re-normalizing the image with multiple units each of which is assigned to the individual transformation. The re-normalization process is an iterative procedure in which only the most accurate unit re-normalizes the image's every iteration. To implement the re-normalization units, we utilize a kernel-based non-linear subspace model. In the model, projection of the image to the subspace represents the amount of transformation in the manner of the population coding. In addition, the accuracy of the representation can be known as distance between the image and the subspace. The system is applied to face detection from snapshots to show significant robustness under scaling, rotation, and translation.
机译:我们提出了一种在对象图像的各种变换的组合下的宽容对象识别系统。该系统通过用多个单元对图像进行重新归一化来实现不变识别,每个单元都分配给单独的变换。重新归一化过程是一个迭代过程,其中只有最精确的单元才能对图像的每次迭代进行重新归一化。为了实现重归一化单元,我们利用了基于内核的非线性子空间模型。在模型中,图像到子空间的投影以总体编码的方式表示变换的量。另外,表示的准确性可以称为图像与子空间之间的距离。该系统应用于快照的人脸检测,以显示在缩放,旋转和平移下的强大鲁棒性。

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