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首页> 外文期刊>Electronic Letters on Computer Vision and Image Analysis: ELCVIA >Memory Organization for Invariant Object Recognition and Categorization
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Memory Organization for Invariant Object Recognition and Categorization

机译:用于不变对象识别和分类的内存组织

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摘要

Using distributed representations of objects enables artificial systems to be more versatile regarding inter- and intra-category variability, improving the appearance-based modeling of visual object understanding. They are built on the hypothesis that object models are structured dynamically using relatively invariant patches of information arranged in visual dictionaries, which can be shared across objects from the same category. However, implementing distributed representations efficiently to support the complexity of invariant object recognition and categorization remains a research problem of outstanding significance for the biological, the psychological, and the computational approach to understanding visual perception. The present work focuses on solutions driven by top-down object knowledge. It is motivated by the idea that, equipped with sensors and processing mechanisms from the neural pathways serving visual perception, biological systems are able to define efficient measures of similarities between properties observed in objects and use these relationships to form natural clusters of object parts that share equivalent ones. Based on the comparison of stimulus-response signatures from these object-to-memory mappings, biological systems are able to identify objects and their kinds. The present work combines biologically inspired mathematical models to develop memory frameworks for artificial systems, where these invariant patches are represented with regular-shaped graphs, whose nodes are labeled with elementary features that capture texture information from object images. It also applies unsupervised clustering techniques to these graph image features to corroborate the existence of natural clusters within their data distribution and determine their composition. The properties of such computational theory include self-organization and intelligent matching of these graph image features based on the similarity and co-occurrence of their captured texture information. The performance to model invariant object recognition and categorization of feature-based artificial systems equipped with each of the developed memory frameworks is validated applying standard methodologies to well-known image libraries found in literature. Additionally, these artificial systems are cross-compared with state-of-the-art alternative solutions. In conclusion, the findings of the present work convey implications for strategies and experimental paradigms to analyze human object memory as well as technical applications for robotics and computer vision.
机译:使用对象的分布式表示,可以使人造系统在类别间和类别内变异性方面更具通用性,从而改善了基于外观的视觉对象理解建模。它们基于以下假设:对象模型是使用视觉词典中排列的相对不变的信息块动态构建的,这些信息块可以在同一类别的对象之间共享。然而,有效地实现分布式表示以支持不变对象识别和分类的复杂性仍然是一个研究问题,对于理解视觉的生物学,心理学和计算方法具有重要意义。本工作着重于由上而下的对象知识驱动的解决方案。该想法的动机是,生物系统通过为视觉感知提供服务的神经通路配备了传感器和处理机制,从而能够定义对对象观察到的特性之间相似性的有效度量,并利用这些关系形成共享的对象部分的自然簇等效的。基于这些对象到内存映射的刺激响应签名的比较,生物系统能够识别对象及其种类。本工作结合了生物学启发的数学模型来开发用于人工系统的存储框架,其中这些不变的补丁用规则形状的图表示,其节点用基本特征标记,这些特征从对象图像中捕获纹理信息。它还将无监督聚类技术应用于这些图形图像特征,以证实其数据分布内自然簇的存在并确定其组成。这种计算理论的特性包括,基于捕获的纹理信息的相似性和共现性,对这些图形图像特征进行自组织和智能匹配。通过将标准方法应用于文献中的知名图像库,可以验证对配备有每个已开发内存框架的基于特征的人工系统的不变对象识别和分类进行建模的性能。此外,这些人工系统与最新的替代解决方案进行了交叉比较。总而言之,本工作的发现传达了对分析人类对象记忆的策略和实验范式以及机器人技术和计算机视觉的技术应用的启示。

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