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Online Learning for Object Recognition with a Hierarchical Visual Cortex Model

机译:分层视觉皮质模型在线学习对象识别

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We present an architecture for the online learning of object representations based on a visual cortex hierarchy developed earlier. We use the output of a topographical feature hierarchy to provide a view-based representation of three-dimensional objects as a form of visual short term memory. Objects are represented in an incremental vector quantization model, that selects and stores representative feature maps of object views together with the object label. New views are added to the representation based on their similarity to already stored views. The realized recognition system is a major step towards shape-based immediate high-performance online recognition capability for arbitrary complex-shaped objects.
机译:我们提出了一种基于较早开发的视觉皮质层次结构的在线学习对象表示的体系结构。我们使用地形特征层次结构的输出来提供三维对象的基于视图的表示形式,作为视觉短期记忆的一种形式。对象以增量矢量量化模型表示,该模型选择并存储对象视图的代表性特征图以及对象标签。基于新视图与已存储视图的相似性,将新视图添加到表示中。实现的识别系统是迈向针对任意复杂形状物体的基于形状的即时高性能在线识别功能的重要一步。

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