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Learning representation hierarchies by sharing visual features: a computational investigation of Persian character recognition with unsupervised deep learning

机译:通过分享视觉特征学习代表层次结构:与无监督深度学习的波斯字符识别的计算调查

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摘要

In humans, efficient recognition of written symbols is thought to rely on a hierarchical processing system, where simple features are progressively combined into more abstract, high-level representations. Here, we present a computational model of Persian character recognition based on deep belief networks, where increasingly more complex visual features emerge in a completely unsupervised manner by fitting a hierarchical generative model to the sensory data. Crucially, high-level internal representations emerging from unsupervised deep learning can be easily read out by a linear classifier, achieving state-of-the-art recognition accuracy. Furthermore, we tested the hypothesis that handwritten digits and letters share many common visual features: A generative model that captures the statistical structure of the letters distribution should therefore also support the recognition of written digits. To this aim, deep networks trained on Persian letters were used to build high-level representations of Persian digits, which were indeed read out with high accuracy. Our simulations show that complex visual features, such as those mediating the identification of Persian symbols, can emerge from unsupervised learning in multilayered neural networks and can support knowledge transfer across related domains.
机译:在人类中,有效地识别书面符号被认为依赖于分层处理系统,其中简单的功能逐渐组合成更摘要,高级表示。这里,我们基于深度信仰网络呈现波斯字符识别的计算模型,其中越来越复杂的视觉特征通过将分层生成模型拟合到感官数据来以完全无监督的方式出现。至关重要的是,从无监督的深度学习中出现的高级内部表示可以通过线性分类器轻松读出,实现最先进的识别准确性。此外,我们测试了手写的数字和字母的假设共享许多常见的视觉特征:捕获字母分布的统计结构的生成模型也应该支持对书面数字的识别。为此目的,培训的波斯信中培训的深度网络被用来建立波斯数字的高级表示,这确实以高精度读出。我们的模拟表明,复杂的视觉功能,例如调解波斯符号的识别,可以从多层神经网络中的无监督学习中出现,并且可以支持相关领域的知识转移。

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