CVFeb 10, 2021

Enhancing efficiency of object recognition in different categorization levels by reinforcement learning in modular spiking neural networks

arXiv:2102.05401v11 citations
Originality Incremental advance
AI Analysis

This work addresses object recognition for computer vision applications, but it is incremental as it builds on existing biologically inspired models.

The authors tackled object recognition across different categorization levels by proposing a modular spiking neural network with reinforcement learning, achieving significant improvements in recognition accuracy on three benchmark datasets.

The human visual system contains a hierarchical sequence of modules that take part in visual perception at superordinate, basic, and subordinate categorization levels. During the last decades, various computational models have been proposed to mimic the hierarchical feed-forward processing of visual cortex, but many critical characteristics of the visual system, such actual neural processing and learning mechanisms, are ignored. Pursuing the line of biological inspiration, we propose a computational model for object recognition in different categorization levels, in which a spiking neural network equipped with the reinforcement learning rule is used as a module at each categorization level. Each module solves the object recognition problem at each categorization level, solely based on the earliest spike of class-specific neurons at its last layer, without using any external classifier. According to the required information at each categorization level, the relevant band-pass filtered images are utilized. The performance of our proposed model is evaluated by various appraisal criteria with three benchmark datasets and significant improvement in recognition accuracy of our proposed model is achieved in all experiments.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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