Pattern-set Representations using Linear, Shallow and Tensor Subspaces

B. Gatto, E. M. Santos, Waldir S. S. Júnior
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引用次数: 1

Abstract

Pattern-set matching refers to a class of problems where learning takes place through sets rather than elements. Much used in computer vision, this approach presents robustness to variations such as illumination, intrinsic parameters of the signal capture devices, and pose of the analyzed object. Inspired by applications of subspace analysis, three new collections of methods are presented in this paper: (1) New representations for two-dimensional sets; (2) Shallow networks for image classification; and (3) Subspaces for tensor representation and classification. New representations are proposed with the aim of preserving the spatial structure and maintaining a fast processing time. We also introduce a technique to keep temporal structure, even using the principal component analysis, which classically does not model sequences. In shallow networks, we present two convolutional neural networks that do not require backpropagation, employing only subspaces for its convolution filters. These networks present advantages when the training time and hardware resources are scarce. Finally, to handle tensor data, such as video data, we propose methods that employ subspaces for representation in a compact and discriminative way. Our proposed work has been applied to several problems, such as 2D data representation, shallow networks for image classification, and tensor representation and learning.
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使用线性、浅和张量子空间的模式集表示
模式集匹配指的是一类通过集合而不是元素进行学习的问题。该方法广泛用于计算机视觉,对光照、信号捕获设备的固有参数和被分析对象的姿态等变化具有鲁棒性。受子空间分析应用的启发,本文提出了三个新的方法集合:(1)二维集合的新表示;(2)用于图像分类的浅层网络;(3)用于张量表示和分类的子空间。为了保持空间结构和保持快速的处理时间,提出了新的表示方法。我们还介绍了一种技术来保持时间结构,甚至使用主成分分析,这是经典的不建模序列。在浅层网络中,我们提出了两个不需要反向传播的卷积神经网络,它们的卷积滤波器只使用子空间。在训练时间和硬件资源稀缺的情况下,这些网络具有一定的优势。最后,为了处理张量数据,如视频数据,我们提出了使用子空间以紧凑和判别的方式表示的方法。我们提出的工作已经应用于几个问题,如二维数据表示、图像分类的浅网络、张量表示和学习。
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