Learning and Memory of Spatial Relationship by a Neural Network with Sparse Features

Jun Miao, Lijuan Duan, Laiyun Qing, Wen Gao, Yiqiang Chen
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引用次数: 2

Abstract

Research on efficiency of learning and memory is very important for theoretic exploration and practical application. This paper gives a discussion on learning and memory of spatial relationships between initial positions and object positions by a neural network with sparse features. As an example, the paper discusses how the neural network learns the visual contexts between human eye centers and random initial positions surrounding the eye centers in images with as little memory as possible. Some sparse features are designed and distances between initial positions and the labeled eye centers in horizontal and vertical directions are learned and memorized respectively. Such a system could predict object positions from a new initial position according to the contexts that the neural network learned. A group of experiments on efficiency of learning and memory with sparse features in several single and integrated scales are analyzed and discussed.
基于稀疏特征神经网络的空间关系学习与记忆
学习记忆效率的研究对于理论探索和实际应用具有十分重要的意义。本文讨论了用具有稀疏特征的神经网络学习和记忆初始位置与目标位置之间的空间关系。作为一个例子,本文讨论了神经网络如何在尽可能少的记忆的情况下学习人眼中心之间的视觉上下文和眼睛中心周围的随机初始位置。设计一些稀疏特征,并分别学习和记忆初始位置与标记眼中心在水平方向和垂直方向上的距离。这样的系统可以根据神经网络学习到的上下文,从一个新的初始位置预测物体的位置。分析和讨论了一组基于稀疏特征的学习记忆效率实验。
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