资源论文Egocentric Future Localization

Egocentric Future Localization

2019-12-20 | |  57 |   31 |   0

Abstract

We presents a method for future localization: to pre-dict plausible future trajectories of ego-motion in egocen-tric stereo images. Our paths avoid obstacles, move be-tween objects, even turn around a corner into space behindobjects. As a byproduct of the predicted trajectories, we discover the empty space occluded by foreground objects. One key innovation is the creation of an EgoRetinal map, akin to an illustrated tourist map, that ‘rearranges’ pixels taking into accounts depth information, the ground plane, and body motion direction, so that it allows motion plan-ning and perception of objects on one image space. Welearn to plan trajectories directly on this EgoRetinal map using first person experience of walking around in a variety of scenes. In a testing phase, given an novel scene, we find multiple hypotheses of future trajectories from the learned experience. We refine them by minimizing a cost function that describes compatibility between the obstacles in the EgoRetinal map and trajectories. We quantitatively evaluate our method to show predictive validity and apply to various real world daily activities including walking, shopping, and social interactions.

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