主动多尺度双目视觉的自主学习

L. Lonini, Yu Zhao, Pramod Chandrashekhariah, Bertram E. Shi, J. Triesch
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引用次数: 26

摘要

我们提出了一种自主学习左眼和右眼图像视觉差异表征的方法,以及两只眼睛注视物体的适当收敛运动。稀疏编码模型(感知)利用双眼基函数对感觉信息进行编码,而强化学习模型(行为)根据感知到的视差产生眼动。通过最小化相同的成本函数,即生成模型对刺激的重建误差,感知和行为是并行发展的。为了有效地处理多个视差范围,在多个尺度上学习稀疏编码模型,对不同分辨率的视差进行编码。类似地,收敛命令在对数尺度上定义,以允许粗操作和细操作。我们用仿人机器人iCub验证了该方法的有效性。我们证明了该模型是完全自校准的,并且不需要任何关于相机参数或系统动力学的先验信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous learning of active multi-scale binocular vision
We present a method for autonomously learning representations of visual disparity between images from left and right eye, as well as appropriate vergence movements to fixate objects with both eyes. A sparse coding model (perception) encodes sensory information using binocular basis functions, while a reinforcement learner (behavior) generates the eye movement, according to the sensed disparity. Perception and behavior develop in parallel, by minimizing the same cost function: the reconstruction error of the stimulus by the generative model. In order to efficiently cope with multiple disparity ranges, sparse coding models are learnt at multiple scales, encoding disparities at various resolutions. Similarly, vergence commands are defined on a logarithmic scale to allow both coarse and fine actions. We demonstrate the efficacy of the proposed method using the humanoid robot iCub. We show that the model is fully self-calibrating and does not require any prior information about the camera parameters or the system dynamics.
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