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Locality-Constrained Multi-Task Joint Sparse Representation for Image Classification

机译:局部约束多任务联合稀疏表示的图像分类

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摘要

In the image classification applications, the test sample with multiple man-handcrafted descriptions can be sparsely represented by a few training subjects. Our paper is motivated by the success of multitask joint sparse representation (MTISR), and considers that the different modalities of features not only have the constraint of joint sparsity across different tasks, but also have the constraint of local manifold structure across different features. We introduce the constraint of local manifold structure into the MTISR framework, and propose the Locality-constrained multi-task joint sparse representation method (LC-MTISR). During the optimization of the formulated objective, the stochastic gradient descent method is used to guarantee fast convergence rate, which is essential for large-scale image categorization. Experiments on several challenging object classification datasets show that our proposed algorithm is better than the MTISR, and is competitive with the state-of-the-art multiple kernel learning methods.
机译:在图像分类应用中,可以由几个训练对象来稀疏地表示带有多个手工描述的测试样本。本文的成功是基于多任务联合稀疏表示(MTISR)的成功,并认为特征的不同模式不仅具有跨不同任务的联合稀疏性约束,而且还具有跨不同特征的局部流形结构的约束。我们将局部流形结构的约束引入MTISR框架,并提出了局部约束的多任务联合稀疏表示方法(LC-MTISR)。在制定目标的优化过程中,采用随机梯度下降法来保证快速收敛速度,这对于大规模图像分类至关重要。在一些具有挑战性的对象分类数据集上的实验表明,我们提出的算法比MTISR更好,并且与最新的多种内核学习方法相比具有竞争力。

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