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Using the 5th dimensions of human visual perception to inspire automated edge and texture segmentation: A fuzzy spatial-taxon approach

机译:使用人类视觉感知的第五维度激发自动化边缘和纹理分割:模糊的空间 - 分类机制

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With the recent stunning success of machine learning, artificially intelligent machine vision research falls (roughly) into two camps: the big data camp and cognitive informatics camp. Big data uses statistical methods to discover latent structures that emerge from the co-occurrences of relevant features when sampling over enormous quantities of data. The cognitive informatics methods design computer vision systems to mimic human cognition. Though some visual latent features that emerge from deep learning networks, mimic mammalian visual detectors, as of yet the information processing mechanisms (analogous to human psychophysical mechanisms) remain hidden within the complexity of the deep nets. Furthermore, the sampling requirements of big data systems require limiting samples to pre-processed sets, such as SHIFT (shift invariant feature transform (Lowe 1999)). Techniques, such as the ones introduced in this paper, provide fast cognitively relevant methods for selecting samples and reducing the number of candidate features. The approach described in this paper live squarely in the camp of designing computer vision A.I. to mimics human cognitive processes. I introduce a novel definition of edges, based on human hierarchical scene perception. Hierarchical scene perception views vision within the 5 dimensions of horizontal & vertical position, depth, time and scene abstraction level (spatial-taxon). Fuzzy inference selects candidate edge elements using the Gestalt psychology principal of good curvilinear continuation, proximity and edges attachment. Spatial-taxon inference infers an edge outline for each level of abstraction within the scene architecture. The system was tested on 60 natural images and the results provide edges more aligned with human intuition of what edges should look like. ROC plots indicate solid performance, with the majority of human subjects rating the edge detection as high quality. The inferred edges are consistent with the finding of neurons responsive to proto-object boundaries in the visual cortex.
机译:随着最近机器学习的令人惊叹的成功,人工智能机器视觉研究(大致)分为两个阵营:大数据营和认知信息营地。大数据使用统计方法发现在对巨额数量的数据上采样时从相关特征的共同发生中出现的潜在结构。认知信息学方法设计计算机视觉系统以模仿人类认知。尽管从深度学习网络中出现的一些视觉潜在特征,但由于信息处理机制(类似于人体心理物理机制)仍然隐藏在深网络的复杂性范围内。此外,大数据系统的采样要求需要将样本限制为预处理集,例如移位(移位不变特征变换(Lowe 1999))。如本文介绍的技术,如本文介绍的技术,提供了用于选择样本并减少候选特征的数量的快速认知相关方法。本文中描述的方法直立于设计计算机视觉A.I.I.模仿人类认知过程。我基于人类分层场景感知介绍了对边缘的新定义。水平和垂直位置,深度,时间和场景抽象级别(空间分类)的5维度内的分层场景感知视图视图。模糊推理使用良好的曲线延续,接近和边缘附件的Gestalt心理学主体选择候选边缘元件。 Spatial-Taxon推理为场景架构中的每个抽象级别的边缘大纲。该系统在60个自然图像上测试,结果提供了与人类直觉相一致的边缘应该看起来像的边缘。 ROC PLOTS表示坚实的性能,大多数人受试者将边缘检测评定为高质量。推断的边缘与响应于视觉皮质中的原子对象边界的神经元的发现一致。

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