Amodal Completion and Size Constancy in Natural Scenes

ICCV(2015)

引用 55|浏览102
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摘要
We consider the problem of enriching current object detection systems with veridical object sizes and relative depth estimates from a single image. There are several technical challenges to this, such as occlusions, lack of calibration data and the scale ambiguity between object size and distance. These have not been addressed in full generality in previous work. Here we propose to tackle these issues by building upon advances in object recognition and using recently created large-scale datasets. We first introduce the task of amodal bounding box completion, which aims to infer the the full extent of the object instances in the image. We then propose a probabilistic framework for learning category-specific object size distributions from available annotations and leverage these in conjunction with amodal completions to infer veridical sizes of objects in novel images. Finally, we introduce a focal length prediction approach that exploits scene recognition to overcome inherent scale ambiguities and demonstrate qualitative results on challenging real-world scenes.
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关键词
amodal completion,size constancy,natural scene,object detection system,veridical object size,relative depth estimate,object recognition,large-scale dataset,amodal bounding box completion,object instance,probabilistic framework,learning category-specific object size distribution,veridical size,focal length prediction approach,scene recognition,scale ambiguity,real-world scene
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