Scatternet hybrid deep learning (SHDL) network for object classification

Amarjot Singh, N. Kingsbury
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引用次数: 20

Abstract

The paper proposes the ScatterNet Hybrid Deep Learning (SHDL) network that extracts invariant and discriminative image representations for object recognition. SHDL framework is constructed with a multi-layer ScatterNet front-end, an unsupervised learning middle, and a supervised learning back-end module. Each layer of the SHDL network is automatically designed as an explicit optimization problem leading to an optimal deep learning architecture with improved computational performance as compared to the more usual deep network architectures. SHDL network produces the state-of-the-art classification performance against unsupervised and semi-supervised learning (GANs) on two image datasets. Advantages of the SHDL network over supervised methods (NIN, VGG) are also demonstrated with experiments performed on training datasets of reduced size.
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提出了一种用于目标识别的离散网络混合深度学习(SHDL)网络。SHDL框架由多层ScatterNet前端、无监督学习中间和监督学习后端模块构成。SHDL网络的每一层都被自动设计为一个显式优化问题,导致与更常见的深度网络架构相比,具有更高计算性能的最佳深度学习架构。SHDL网络在两个图像数据集上针对无监督和半监督学习(gan)产生了最先进的分类性能。SHDL网络相对于监督方法(NIN, VGG)的优势也通过在缩减的训练数据集上进行的实验得到了证明。
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