An Attention Selection Model with Visual Memory and Online Learning

Chenlei Guo, Liming Zhang
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引用次数: 8

Abstract

In this paper, an attention selection model with visual memory and online learning is proposed, which has three parts: Sensory Mapping (SM), Cognitive Mapping (CM) and Motor Mapping (MM). CM is the novelty of our model which incorporates visual memory and online learning. In order to mimic visual memory, we put forward an Amnesic Incremental Hierachical Discriminant Regression (AIHDR) Tree which has an amnesic function to guide the deletion of redundant information of the tree. Experimental results show that our AIHDR tree has better performance in retrieval speed and accuracy than IHDR/HDR tree. Self-Supervised Competition Neural Network (SSCNN) in CM has the characteristics of online learning since its connection weights can be updated in real time according to the change of environment. Eyeball Movement Prediction (EMP) mechanism is applied to estimate the movement of human eyeball so that attention can be focused on interested objects. Several applications such as object tracking and robot self-localization are realized by our proposed work.
视觉记忆与在线学习的注意选择模型
本文提出了一个具有视觉记忆和在线学习的注意选择模型,该模型由三部分组成:感觉映射(SM)、认知映射(CM)和运动映射(MM)。CM是我们模型的新颖之处,它结合了视觉记忆和在线学习。为了模拟视觉记忆,我们提出了一种健忘性增量层次判别回归(AIHDR)树,该树具有健忘性功能,指导冗余信息的删除。实验结果表明,我们的AIHDR树在检索速度和准确性上都优于IHDR/HDR树。CM中的自监督竞争神经网络(SSCNN)具有在线学习的特点,它的连接权值可以根据环境的变化实时更新。眼球运动预测(EMP)机制用于估计眼球的运动,从而使眼球的注意力集中在感兴趣的物体上。在此基础上实现了目标跟踪和机器人自定位等应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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