A novel methodology for exploring enhancement and depression phenomena in multisensory localization: A biologically inspired solution from Superior Colliculus

K. Ravulakollu, K. Burn
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Abstract

Localization is very essential for interaction when it comes to multisensory integration. Based on Superior Colliculus (SC) motivation, the audio and visual signal processing during the stimuli integration is investigated. A novel methodology is proposed using neural network architecture that can localize effectively, especially in integrating stimuli of varied intensities in lower order audio and visual signals. During the integration, cases arise where the SC is unable to localize the source due to simultaneous arrival of too weak or too strong stimuli, causing enhancement and depression phenomena. This phenomena arise when the SC is not able to localize the source based on the given stimuli intensities. This paper provides a dual layered neural network model that integrates visual and audio sensory stimuli and also drives a way to track the stimuli source. This behavior is applicable for guided robots that help humans to track or cooperate for tasks like personal assistance, route guidance and incident tracking applications.
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探索多感觉定位中增强和抑制现象的新方法:来自上丘的生物学启发解决方案
当涉及到多感觉整合时,定位对于互动是非常重要的。基于上丘动机,研究了刺激整合过程中视听信号的处理过程。提出了一种新的方法,利用神经网络结构,可以有效地定位,特别是在整合不同强度的低阶音频和视觉信号的刺激。在整合过程中,由于同时到达的刺激过弱或过强,SC无法定位源,导致增强和抑制现象。当SC不能根据给定的刺激强度定位源时,就会出现这种现象。本文提出了一种集成视觉和听觉感官刺激的双层神经网络模型,并提出了一种跟踪刺激源的方法。这种行为适用于引导机器人,帮助人类跟踪或合作任务,如个人协助,路线指导和事件跟踪应用程序。
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