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E2LSH based multiple kernel approach for object detection

机译:基于E2LSH的多核目标检测方法

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摘要

Multiple kernel learning (MKL) methods is widely used in object detection. The conventional MKL methods employ a linear and stationary kernel combination format which cannot accurately describe the distributions of complex data. This paper proposes an E2LSH based clustering algorithm which combines the advantages of nonlinear multiple kernel combination methods-E2LSH-MKL E2LSH-MKL is a nonlinear and nonstationary multiple kernel learning method. This method utilizes the Hadamard product to realize nonlinear combination of multiple different kernels in order to make full use of information generated from the nonlinear interaction of different kernels. Besides, the method employs E2LSH-based clustering algorithm to group images into subsets, then assigns cluster-related kernel weights according to relative contributions of different kernels on each image subset to realize nonstationary weighting of multiple kernels to improve learning performance. Finally, E2I.SH-MKL is applied to object detection. Experiment results on datasets of TRECV1D 2005 and Caltech-256 show that our method is superior to the state-of-the-art multiple kernel learning methods.
机译:多核学习(MKL)方法广泛用于对象检测。传统的MKL方法采用线性和固定核组合格式,无法准确描述复杂数据的分布。本文提出了一种基于E2LSH的聚类算法,该算法结合了非线性多核组合方法的优点-E2LSH-MKL E2LSH-MKL是一种非线性的非平稳多核学习方法。该方法利用Hadamard乘积来实现多个不同内核的非线性组合,以便充分利用从不同内核的非线性交互产生的信息。此外,该方法采用基于E2LSH的聚类算法将图像分组为子集,然后根据每个图像子集上不同核的相对贡献分配聚类相关的核权重,以实现多个核的非平稳加权,从而提高学习性能。最后,将E2I.SH-MKL应用于物体检测。在TRECV1D 2005和Caltech-256数据集上的实验结果表明,我们的方法优于最新的多核学习方法。

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