用于识别自然场景类别的生物启发对象识别系统

Ali Alameer, P. Degenaar, K. Nazarpour
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引用次数: 5

摘要

在过去的十年中,视觉处理引起了人们的广泛关注。对象识别的分层方法正逐渐被广泛接受。一般来说,它们的灵感来自于人类视觉皮层的腹侧流,它负责快速分类。与物体相似,自然场景具有共同的特征,因此可以以相同的方式进行分类。然而,自然场景通常在类别之间显示出高度的统计相关性。事实上,这是大多数对象识别模型面临的主要挑战。在没有注意的情况下对自然场景进行快速分类是一个挑战。然而,研究人员发现,150毫秒足以对复杂的自然场景进行分类。我们测试了我们最近和生物启发的En-HMAX模型的视觉处理能力,用于场景分类。结果表明,En-HMAX模型具有与最先进的自然场景分类方法相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biologically-inspired object recognition system for recognizing natural scene categories
Visual processing has attracted a lot of attention in the last decade. Hierarchical approaches for object recognition are gradually becoming widely-accepted. Generally, they are inspired by the ventral stream of human visual cortex, which is in charge of rapid categorization. Similar to objects, natural scenes share common features and can, therefore, be classified in the same manner. However, natural scenes generally show a high level of statistical correlation between classes. This, in fact, is a major challenge for most object recognition models. Rapid categorization of a natural scene in the absence of attention is a challenge. However, researchers have found that 150 ms is enough to categorize a complex natural scene. We tested the capability of our recent and bio-inspired En-HMAX model of visual processing for scene classification. The results show the En-HMAX model has a comparable performance to state of the art methods for natural scene categorization.
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