Data-Driven 3D Primitives for Single Image Understanding Additional Inference Results on NYU v2
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چکیده
We first present our sparse and dense interpretations for the top 100 most confident results, ordered by confidence. Confidence is defined as the mean value of the weight image (i.e., the normalization constant Z) and is roughly equivalent to the number of detections, weighted by cablibrated score. We then present results automatically evenly spaced among the remaining results.
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Data-Driven 3D Primitives for Single Image Understanding Additional Inference Results on SUNS and B3DO
We first present the top 50 most confident results per dataset, training on the NYU v2 dataset and testing the other dataset. Confidence is the mean value of the weight image (i.e., the normalization constant Z), roughly equivalent to the number of detections, weighted by cablibrated score. We then present results automatically selected among the remaining results, evenly spaced according to co...
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تاریخ انتشار 2013