CVApr 10, 2017

Deep Affordance-grounded Sensorimotor Object Recognition

arXiv:1704.02787v135 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of robust object recognition for AI systems by integrating sensorimotor cues, representing an incremental advance in the field.

The paper tackled the problem of automatic object recognition by fusing appearance information with affordance data, achieving up to a 29% relative error reduction.

It is well-established by cognitive neuroscience that human perception of objects constitutes a complex process, where object appearance information is combined with evidence about the so-called object "affordances", namely the types of actions that humans typically perform when interacting with them. This fact has recently motivated the "sensorimotor" approach to the challenging task of automatic object recognition, where both information sources are fused to improve robustness. In this work, the aforementioned paradigm is adopted, surpassing current limitations of sensorimotor object recognition research. Specifically, the deep learning paradigm is introduced to the problem for the first time, developing a number of novel neuro-biologically and neuro-physiologically inspired architectures that utilize state-of-the-art neural networks for fusing the available information sources in multiple ways. The proposed methods are evaluated using a large RGB-D corpus, which is specifically collected for the task of sensorimotor object recognition and is made publicly available. Experimental results demonstrate the utility of affordance information to object recognition, achieving an up to 29% relative error reduction by its inclusion.

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