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Modeling Brain-like Association Among Focal Visual Objects by a Bipartite Mesh

机译:通过双链网格模拟焦点视觉物体之间的脑状关联

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The challenge of traditional visual recognition tasks has long fallen on the segmentation of objects in two-dimensional images, whereas it is less an issue in human visual learning with the help of stereo vision and physical touches. In this kind of configuration, object classification and landmark matching are fundamentally based on the semantic similarity from inputs to conceptual prototypes in memory. Here we propose a brain-inspired cognition model that deals with visual learning tasks after the focal objects have been distinguished from their backgrounds. We designed a bipartite mesh to implement visual cognition on human faces. This mesh resolves facial landmarks into point clouds in a unique semantic space, where facial characteristics can be perceived and classified through the comparison with prototypes in the memorized ontology. These face prototypes are updatable online, and landmark matching between prototypes in the vicinity is feasible through a direct mapping between relative positions within their point clouds. Besides, the association between distant prototypes in the semantic space can be realized by a sequence of matching processes on intermediaries in memory. Our findings suggest a concise framework for simulating human visual learning mechanisms that well execute one-shot learning, online learning, and analogical reasoning, at the same time subject to certain brain-like constraints such as oblivion and lack of analogical cues between two dissimilar concepts.
机译:传统的视觉识别任务的挑战长期以来,在二维图像中的对象分割,而在立体声视觉和物理触摸的帮助下,人类视觉学习的问题较少。在这种配置中,对象分类和地标匹配基本上基于从内存中的输入到概念原型的语义相似性。在这里,我们提出了一种脑激发的认知模型,在焦点对象与背景中区分后处理视觉学习任务。我们设计了一款双头网格,在人面上实现视觉认知。该网格将面部地标解析为唯一的语义空间中的点云,其中可以通过与记忆本体中的原型的比较来感知和分类面部特征。这些面部原型在线可更新,并且在附近的原型之间的地标匹配通过直接覆盖之间的相对位置之间的直接映射来可行。此外,语义空间中的远端原型之间的关联可以通过在存储器中的中间体上的匹配过程序列来实现。我们的研究结果表明,模拟人类视觉学习机制的简明框架,该机制很好地执行一次性学习,在线学习和类比推理,同时受到某些大脑的制约因子,例如遗忘和两个不同的概念之间的类似类比提示。

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