HMAX模型:一个调查

Chang Liu, F. Sun
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引用次数: 12

摘要

HMAX模型是由Hubel和Wiesel提出的皮层简单细胞和复杂细胞模型衍生而来的一种生物启发的前馈目标识别架构。HMAX是一种分层的基于生物的识别模型,它以交替的S层和C层捕捉灵长类动物皮层的特性,分别对应简单细胞和复杂细胞。尽管受到生物因素的限制,但在与其他最先进的计算机视觉算法竞争时,HMAX在不同领域表现出令人满意的性能。这一层次模型提出了有见地的思想和方法,推动了HMAX模型的发展。本文回顾了该模型的起源,以及在此基础上的改进和修改。
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HMAX model: A survey
HMAX model is a bio-inspired feedforward architecture for object recognition, which is derived from the simple and complex cells model in cortex proposed by Hubel and Wiesel. As a hierarchical bio-based recognition model, HMAX captures the properties of primate cortex with alternated S layers and C layers, corresponding to simple cells and complex cells respectively. Although constrained by biological factors, HMAX shows satisfying performance in different fields when competing with other state-of-the-art computer vision algorithms. Insightful ideas and methods have been developed for this hierarchical model, which advances the progress of HMAX model. This paper reviews the origin of this model, as well as the improvements and modifications based on this model.
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