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A Unified Model for Near and Remote Sensing

About

We propose a novel convolutional neural network architecture for estimating geospatial functions such as population density, land cover, or land use. In our approach, we combine overhead and ground-level images in an end-to-end trainable neural network, which uses kernel regression and density estimation to convert features extracted from the ground-level images into a dense feature map. The output of this network is a dense estimate of the geospatial function in the form of a pixel-level labeling of the overhead image. To evaluate our approach, we created a large dataset of overhead and ground-level images from a major urban area with three sets of labels: land use, building function, and building age. We find that our approach is more accurate for all tasks, in some cases dramatically so.

Scott Workman, Menghua Zhai, David J. Crandall, Nathan Jacobs• 2017

Related benchmarks

TaskDatasetResultRank
Land Use EstimationBrooklyn
mIoU45.54
8
Land Use ClassificationQueens (test)
mIoU33.48
8
Building Function EstimationBrooklyn
mIoU14.59
4
Function ClassificationQueens (test)
mIoU3.73
4
Age ClassificationQueens (test)
mIoU9.53
4
Building Age EstimationBrooklyn
mIoU0.2313
4
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