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Explicit Object Representation by Sparse Neural Codes.

机译:稀疏神经代码的显式对象表示。

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摘要

Neurons have been identified in the human medial temporal lobe (MTL) that display a strong selectivity for only a few stimuli (such as familiar individuals or landmark buildings) out of perhaps 100 presented to the test subject. While highly selective for a particular object or category, these cells are remarkably insensitive to different presentations (i.e., different poses and views) of their preferred stimulus. This invariant, sparse, and explicit representation of the world may be crucial to the transformation of complex visual stimuli into more abstract memories. In this thesis I first discuss the issue of how best to quantify sparseness, particularly in very sparse systems where biases are significant, and show the results of this analysis applied to human MTL data. I also provide an overview of existing results from other investigators on measuring sparseness both elsewhere along the primate visual pathway and in selected other sensory processing systems. From there I move into the computational realm. Sparse coding as a computational constraint applied to the representation of natural images has been shown to produce receptive fields strikingly similar to those observed in mammalian primary visual cortex. I apply sparse coding as a model for processing further along the visual hierarchy: not directly to images but rather to an invariant feature-based representation of images analogous to that found in the inferotemporal cortex. This combination of sparseness and invariance naturally leads to explicit category representation. That is, by exposing the model to different images drawn from different categories, units develop that respond selectively to different categories. After extending an existing model of sparse coding and providing some mathematical analysis of its operation, I show results obtained by applying this method both to unsupervised category discovery in images and to differentiation between images of different individuals.
机译:在人类颞颞叶(MTL)中已鉴定出神经元,这些神经元仅对呈现给测试对象的100种刺激(例如熟悉的个体或标志性建筑)表现出强烈的选择性。尽管对特定对象或类别具有高度选择性,但这些单元格对其首选刺激的不同表示(即不同的姿势和视图)非常不敏感。这种对世界的不变,稀疏和明确的表示可能对将复杂的视觉刺激转换为更抽象的记忆至关重要。在本文中,我首先讨论了如何最好地量化稀疏度的问题,尤其是在偏差很严重的非常稀疏的系统中,并展示了此分析结果适用于人类MTL数据。我还概述了其他研究人员在灵长类动物视觉途径其他地方和所选其他感觉处理系统中测量稀疏性的现有结果。从那里我进入了计算领域。稀疏编码作为一种应用于自然图像表示的计算约束条件,已显示出其产生的接收场与哺乳动物初级视觉皮层中观察到的惊人地相似。我将稀疏编码用作模型,以进一步沿视觉层次进行处理:不直接针对图像,而是基于类似于下颞叶皮层的图像的基于不变特征的图像表示。稀疏性和不变性的这种结合自然会导致显式的类别表示。也就是说,通过将模型暴露于从不同类别绘制的不同图像,可以开发出对不同类别有选择性响应的单元。在扩展了现有的稀疏编码模型并提供了其操作的数学分析之后,我展示了通过将此方法应用于图像中的无监督类别发现以及不同个体的图像之间的区分而获得的结果。

著录项

  • 作者

    Waydo, Stephen.;

  • 作者单位

    California Institute of Technology.;

  • 授予单位 California Institute of Technology.;
  • 学科 Biology Neuroscience.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 156 p.
  • 总页数 156
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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