CNN通用机器上二进制向量的监督和无监督类艺术分类

D. Bálya, T. Roska
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引用次数: 1

摘要

快速和鲁棒的特征向量分类是许多实时系统的关键任务。细胞神经/非线性网络通用机(CNN-UM)可以非常有效地应用于特征检测器和对象识别结果的后处理。本文展示了如何将基于自适应共振理论(ART)的鲁棒分类方案也映射到CNN-UM上。所设计的模拟CNN算法能够对提取的二值特征向量进行分类,保持了ART网络的优点。提出了一种灵敏度可调、自动生成新类的无监督分类算法。提出了另一种CNN-UM算法用于监督分类。除了这两种算法之外,还提出了一个新的“修复”函数来减少创建类的数量。所提出的二值特征向量分类方法在现有标准的CNN-UM芯片上是可行的。
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Supervised and unsupervised art-like classifications of binary vectors on the CNN universal machine
Fast and robust classification of feature vectors is a crucial task in a number of real-time systems. A cellular neural/nonlinear network universal machine (CNN-UM) can be applied very efficiently as a feature detector and also for post-processing the results for object recognition. This paper shows how a robust classification scheme based on adaptive resonance theory (ART) can also be mapped to the CNN-UM. The designed analogic CNN algorithm is capable of classifying the extracted binary feature vectors keeping the advantages of the ART networks. An analogic algorithm is presented for unsupervised classification with tunable sensitivity and automatic new class creation. Another CNN-UM algorithm is suggested for supervised classification. In addition to the two algorithms, a new "repair" function is proposed to reduce the number of the created classes. The presented binary feature vector classification is feasible on the existing standard CNN-UM chips.
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