Tensor-Based Filter Design using Kernel Ridge Regression

C. Bauckhage
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引用次数: 4

Abstract

Tensor-based approaches to visual object detection can drastically reduce the number of parameters in the training process. Compared to their vector-based counterparts, tensor methods therefore train faster, better manage noisy or corrupted training samples, and are less prone to over-fitting. In this paper, we show how to incorporate the kernel trick into tensor-based filter design. Dealing with object detection in cluttered natural environments, the method is shown to cope with substantially varying training data and a cascade of only two kernel tensor-filters is demonstrated to provide very reliable results.
基于核岭回归的张量滤波器设计
基于张量的视觉目标检测方法可以大大减少训练过程中的参数数量。因此,与基于向量的方法相比,张量方法训练更快,更好地管理有噪声或损坏的训练样本,并且不容易过度拟合。在本文中,我们展示了如何将核技巧结合到基于张量的滤波器设计中。在处理杂乱自然环境中的目标检测时,该方法被证明可以处理大量变化的训练数据,并且只有两个核张量滤波器的级联被证明可以提供非常可靠的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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