A nonlinear manifold learning strategy for lighting and orientation invariant pattern recognition

V. Asari
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Abstract

The human brain processes enormous volumes of high-dimensional data for everyday perception. To humans, a picture is worth a thousand words, but to a machine, it is just a seemingly random array of numbers. Although machines are very fast and efficient, they are vastly inferior to humans for everyday information processing. Algorithms that mimic the way the human brain computes and learns may be the solution. We present a theoretical model based on the observation that images of similar visual perceptions reside in a complex manifold in a low-dimensional image space. The perceived features are often highly structured and hidden in a complex set of relationships or high-dimensional abstractions. To model the pattern manifold, we present a novel learning algorithm using a recurrent neural architecture. The brain memorizes information using a dynamical system made of interconnected neurons. Retrieval of information is accomplished in an associative sense. It starts from an arbitrary state that might be an encoded representation of a visual image and converges to another state that is stable. The stable state is what the brain remembers. In designing a recurrent neural architecture, it is usually of prime importance to guarantee the convergence in the dynamics of the network. We propose to modify this picture: if the brain remembers by converging to the state representing familiar patterns, it should also diverge from such states when presented with an unknown encoded representation of a visual image belonging to a different category. That is, the identification of an instability mode is an indication that a presented pattern is far away from any stored pattern and therefore cannot be associated with current memories. These properties can be used to circumvent the plasticity-stability dilemma by using the fluctuating mode as an indicator to create new states. We capture this behavior using a novel neural architecture and learning algorithm, in which the system performs self-organization utilizing a stability mode and an instability mode for the dynamical system. Based on this observation we developed a self-organizing line attractor, which is capable of generating new lines in the feature space to learn unrecognized patterns. Experiments performed on various databases show that the proposed nonlinear line attractor is able to successfully associate patterns and it provides better association when compared to other state of the art techniques. It shows that the proposed model is able to create nonlinear manifolds in a multidimensional feature space to distinguish complex patterns.
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光照和方向不变模式识别的非线性流形学习策略
人类大脑处理大量的高维数据来进行日常感知。对人类来说,一张图片胜过千言万语,但对机器来说,它只是一组看似随机的数字。虽然机器非常快速和高效,但它们在日常信息处理方面远远不如人类。模仿人类大脑计算和学习方式的算法可能是解决方案。我们提出了一个基于观察的理论模型,即相似视觉感知的图像存在于低维图像空间的复杂流形中。感知到的特征通常是高度结构化的,隐藏在一组复杂的关系或高维抽象中。为了对模式流形建模,我们提出了一种使用递归神经结构的新学习算法。大脑通过一个由相互连接的神经元组成的动态系统来记忆信息。信息的检索是以联想的方式完成的。它从一个任意的状态开始,这个状态可能是视觉图像的编码表示,并收敛到另一个稳定的状态。稳定的状态是大脑所记住的。在设计递归神经网络结构时,保证网络的动态收敛性通常是最重要的。我们建议修改这幅图:如果大脑通过收敛到代表熟悉模式的状态来记忆,那么当呈现属于不同类别的视觉图像的未知编码表示时,它也应该偏离这种状态。也就是说,不稳定模式的识别表明所呈现的模式远离任何存储模式,因此不能与当前记忆相关联。这些特性可以通过使用波动模式作为创建新状态的指示器来规避塑性-稳定性困境。我们使用一种新的神经结构和学习算法来捕捉这种行为,其中系统利用动态系统的稳定模式和不稳定模式进行自组织。基于这一观察,我们开发了一个自组织的线吸引子,它能够在特征空间中生成新的线来学习未识别的模式。在各种数据库上进行的实验表明,所提出的非线性线吸引子能够成功地关联模式,并且与其他先进技术相比,它提供了更好的关联。实验结果表明,该模型能够在多维特征空间中生成非线性流形来识别复杂模式。
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