资源论文Learning and calibrating per-location classi?ers for visual place recognition

Learning and calibrating per-location classi?ers for visual place recognition

2019-12-10 | |  40 |   40 |   0

Abstract

The aim of this work is to localize a query photograph by fifinding other images depicting the same place in a large geotagged image database. This is a challenging task due to changes in viewpoint, imaging conditions and the large size of the image database. The contribution of this work is two-fold. First, we cast the place recognition problem as a classifification task and use the available geotags to train a classififier for each location in the database in a similar manner to per-exemplar SVMs in object recognition. Second, as only few positive training examples are available for each location, we propose a new approach to calibrate all the per-location SVM classififiers using only the negative examples. The calibration we propose relies on a signifificance measure essentially equivalent to the p-values classically used in statistical hypothesis testing. Experiments are performed on a database of 25,000 geotagged street view images of Pittsburgh and demonstrate improved place recognition accuracy of the proposed approach over the previous work.

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