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Human inspired pattern recognition via local invariant features.

机译:通过局部不变特征获得人类启发的模式识别。

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摘要

Vision is increasingly becoming a vital element in the manufacturing industry. As complex as it already is, vision is becoming even more difficult to implement in a pattern recognition environment as it converges toward the level of what humans visualize. Relevant brain work technologies are allowing vision systems to add capability and tasks that were long reserved for humans. The ability to recognize patterns like humans do is a good goal in terms of performance metrics for manufacturing activities. To achieve this goal, we created a neural network that achieves pattern recognition analogous to the human visual cortex using high quality keypoints by optimizing the scale space and pairing keypoints with edges as input into the model.;This research uses the Taguchi Design of Experiments approach to find optimal values for the SIFT parameters with respect to finding correct matches between images that vary in rotation and scale. The approach used the Taguchi L18 matrix to determine the optimal parameter set. The performance obtained from SIFT using the optimal solution was compared with the performance from the original SIFT algorithm parameters. It is shown that correct matches between an original image and a scaled, rotated, or scaled and rotated version of that image improves by 17% using the optimal values of the SIFT.;A human inspired approach was used to create a CMAC based neural network capable of pattern recognition. A comparison of a 3 object, 30 object, and 50 object scenes were examined using edge and optimized SIFT based features as inputs and produced extensible results from 3 to 50 objects based on classification performance. The classification results prove that we achieve a high level of pattern recognition that ranged from 96.1% to 100% for objects under consideration. The result is a pattern recognition model capable of locally based classification based on invariant information without the need for sets of information that include input sensory data that is not necessarily invariant (background data, raw pixel data, viewpoint angles) that global models rely on in pattern recognition.
机译:视觉正日益成为制造业中的重要元素。视觉已经变得非常复杂,但随着其向人类可视化水平的融合,在模式识别环境中实现视觉变得更加困难。相关的大脑工作技术使视觉系统能够增加长期以来为人类保留的功能和任务。就制造活动的绩效指标而言,像人类一样识别模式的能力是一个好目标。为了实现这一目标,我们创建了一个神经网络,该神经网络通过优化比例空间并将关键点与边缘配对作为模型输入,从而使用高质量关键点来实现类似于人类视觉皮层的模式识别。;本研究使用了Taguchi实验设计方法以找到关于SIFT参数的最佳值,以找到旋转和比例变化的图像之间的正确匹配。该方法使用田口L18矩阵确定最佳参数集。使用最佳解决方案从SIFT获得的性能与原始SIFT算法参数的性能进行了比较。结果表明,使用SIFT的最佳值,原始图像与该图像的缩放,旋转或缩放旋转版本之间的正确匹配度提高了17%.;采用了人工启发的方法来创建基于CMAC的神经网络具有模式识别能力。使用边缘和基于SIFT的优化特征作为输入,检查了3个对象,30个对象和50个对象场景的比较,并基于分类性能从3个对象到50个对象产生了可扩展的结果。分类结果证明,对于所考虑的对象,我们实现了高水平的模式识别,范围从96.1%到100%。结果是一种模式识别模型,该模型识别模型能够基于不变信息进行基于本地的分类,而无需包含全局模型所依赖的不一定是不变的输入感觉数据(背景数据,原始像素数据,视点角度)的信息集。模式识别。

著录项

  • 作者

    Maestas, Dominic Ron.;

  • 作者单位

    The University of New Mexico.;

  • 授予单位 The University of New Mexico.;
  • 学科 Applied Mathematics.;Artificial Intelligence.;Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 128 p.
  • 总页数 128
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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