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Autonomous Development of Active Binocular and Motion Vision Through Active Efficient Coding

机译:通过主动有效编码自主开发主动双目和运动视觉

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摘要

We present a model for the autonomous and simultaneous learning of active binocular and motion vision. The model is based on the Active Efficient Coding (AEC) framework, a recent generalization of classic efficient coding theories to active perception. The model learns how to efficiently encode the incoming visual signals generated by an object moving in 3-D through sparse coding. Simultaneously, it learns how to produce eye movements that further improve the efficiency of the sensory coding. This learning is driven by an intrinsic motivation to maximize the system's coding efficiency. We test our approach on the humanoid robot iCub using simulations. The model demonstrates self-calibration of accurate object fixation and tracking of moving objects. Our results show that the model keeps improving until it hits physical constraints such as camera or motor resolution, or limits on its internal coding capacity. Furthermore, we show that the emerging sensory tuning properties are in line with results on disparity, motion, and motion-in-depth tuning in the visual cortex of mammals. The model suggests that vergence and tracking eye movements can be viewed as fundamentally having the same objective of maximizing the coding efficiency of the visual system and that they can be learned and calibrated jointly through AEC.
机译:我们提出主动和主动双目和运动视觉的同时学习的模型。该模型基于主动有效编码(AEC)框架,这是经典有效编码理论到主动感知的最新概括。该模型学习如何通过稀疏编码有效编码由3D运动的对象生成的传入视觉信号。同时,它学习如何产生眼动,从而进一步提高感觉编码的效率。这种学习是由最大限度地提高系统编码效率的内在动力所驱动的。我们使用模拟在类人机器人iCub上测试了我们的方法。该模型演示了精确的物体固定的自校准和运动物体的跟踪。我们的结果表明,该模型一直在不断改进,直到遇到诸如照相机或电机分辨率之类的物理约束,或对其内部编码能力的限制。此外,我们表明,新兴的感官调节特性与视差,运动和哺乳动物视觉皮层中的深度运动调节的结果一致。该模型表明,从根本上可以将收敛和跟踪眼球运动视为具有最大化视觉系统编码效率的相同目标,并且可以通过AEC共同学习和校准它们。

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