Statistical Search for Hierarchical Linear Optimal Representations of Images

Qiang Zhang, Xiuwen Liu, Anuj Srivastava
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Abstract

Although linear representations of images are widely used in appearance-based recognition of objects, the frequently used ideas, such as PCA, ICA, and FDA, are often found to be suboptimal. A stochastic search algorithm has been proposed recently [4] for finding representations that are optimal for specific tasks and datasets. However, this search algorithm is computationally efficient only when the image size is relatively small. Here we propose a hierarchical learning algorithm to speed up the search. The proposed approach decomposes the original optimization problem into several stages according to a hierarchical organization. In particular, the following idea is applied recursively: (i) reduce the image dimension using a shrinkage matrix, (ii) optimize the recognition performance in the reduced space, and (iii)expand the optimal subspace to the bigger space in a pre-specified way. We show that the optimal performance is maintained in the last step. By applying this decomposition procedure recursively, a hierarchy of layers is formed. This speeds up the original algorithm significantly since the search is performed mainly in reduced spaces. The effectiveness of hierarchical learning is illustrated on a popular database, where the computation time is reduced by a large factor compared to the original algorithm.
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图像分层线性最优表示的统计搜索
尽管图像的线性表示广泛用于基于物体外观的识别,但经常使用的想法,如PCA、ICA和FDA,经常被发现是次优的。最近提出了一种随机搜索算法[4],用于寻找特定任务和数据集的最佳表示。然而,这种搜索算法只有在图像尺寸相对较小的情况下才具有计算效率。在这里,我们提出了一种分层学习算法来加快搜索速度。该方法将原优化问题按层次结构分解为若干阶段。特别是,递归地应用以下思想:(i)使用收缩矩阵降低图像维数,(ii)在减少的空间中优化识别性能,(iii)以预先指定的方式将最优子空间扩展到更大的空间。我们证明了在最后一步保持了最优的性能。通过递归地应用此分解过程,形成了层的层次结构。这大大提高了原始算法的速度,因为搜索主要在简化空间中执行。在一个流行的数据库上说明了分层学习的有效性,与原始算法相比,该算法的计算时间大大减少。
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