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arxiv: 1809.10976 · v1 · pith:FWF65IUX · submitted 2018-09-28 · cs.CV

CNNs Fusion for Building Detection in Aerial Images for the Building Detection Challenge

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classification cs.CV
keywords buildingchallengedetectionfusionresultssegmentationsolutionadjacent
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This paper presents our contribution to the DeepGlobe Building Detection Challenge. We enhanced the SpaceNet Challenge winning solution by proposing a new fusion strategy based on a deep combiner using segmentation both results of different CNN and input data to segment. Segmentation results for all cities have been significantly improved (between 1% improvement over the baseline for the smallest one to more than 7% for the largest one). The separation of adjacent buildings should be the next enhancement made to the solution.

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