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首页> 外文期刊>Frontiers in Neurorobotics >Joint Learning of Binocularly Driven Saccades and Vergence by Active Efficient Coding
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Joint Learning of Binocularly Driven Saccades and Vergence by Active Efficient Coding

机译:通过主动有效编码对双眼驱动扫视和散度进行联合学习

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This paper investigates two types of eye movements: vergence and saccades. Vergence eye movements are responsible for bringing the images of the two eyes into correspondence, whereas saccades drive gaze to interesting regions in the scene. Control of both vergence and saccades develops during early infancy. To date, these two types of eye movements have been studied separately. Here, we propose a computational model of an active vision system that integrates these two types of eye movements. We hypothesize that incorporating a saccade strategy driven by bottom-up attention will benefit the development of vergence control. The integrated system is based on the active efficient coding framework, which describes the joint development of sensory-processing and eye movement control to jointly optimize the coding efficiency of the sensory system. In the integrated system, we propose a binocular saliency model to drive saccades based on learned binocular feature extractors, which simultaneously encode both depth and texture information. Saliency in our model also depends on the current fixation point. This extends prior work, which focused on monocular images and saliency measures that are independent of the current fixation. Our results show that the proposed saliency-driven saccades lead to better vergence performance and faster learning in the overall system than random saccades. Faster learning is significant because it indicates that the system actively selects inputs for the most effective learning. This work suggests that saliency-driven saccades provide a scaffold for the development of vergence control during infancy.
机译:本文研究了两种类型的眼睛运动:发散和扫视。散光眼动负责使两只眼睛的图像相互对应,而扫视运动将视线驱向场景中有趣的区域。在婴儿早期就发展了对发散和扫视的控制。迄今为止,已经分别研究了这两种类型的眼睛运动。在这里,我们提出了一种主动视觉系统的计算模型,该模型整合了这两种类型的眼睛运动。我们假设合并由自下而上的注意驱动的扫视策略将有利于收敛控制的发展。该集成系统基于主动有效编码框架,该框架描述了感觉处理和眼睛运动控制的联合开发,以共同优化感觉系统的编码效率。在集成系统中,我们提出了一个双眼显着性模型,该模型基于学习的双眼特征提取器来驱动扫视,该提取器同时对深度和纹理信息进行编码。我们模型中的显着性还取决于当前的固定点。这扩展了先前的工作,后者专注于与当前注视无关的单眼图像和显着性度量。我们的结果表明,与随机扫视相比,拟议的显着性扫视在整体系统中具有更好的收敛性能和更快的学习速度。更快的学习非常重要,因为它表明系统正在积极选择输入以进行最有效的学习。这项工作表明,显着性扫视为婴儿期趋近控制的发展提供了一个支架。

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