Exploiting Convolutional Representations for Multiscale Human Settlement Detection

We test this premise and explore representation spaces from a single deep convolutional network and their visualization to argue for a novel unified feature extraction framework. The objective is to utilize and re-purpose trained feature extractors without the need for network retraining on three re...

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Hauptverfasser: Lunga, Dalton, Patlolla, Dilip, Yang, Lexie, Weaver, Jeanette, Bhadhuri, Budhendra
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creator Lunga, Dalton
Patlolla, Dilip
Yang, Lexie
Weaver, Jeanette
Bhadhuri, Budhendra
description We test this premise and explore representation spaces from a single deep convolutional network and their visualization to argue for a novel unified feature extraction framework. The objective is to utilize and re-purpose trained feature extractors without the need for network retraining on three remote sensing tasks i.e. superpixel mapping, pixel-level segmentation and semantic based image visualization. By leveraging the same convolutional feature extractors and viewing them as visual information extractors that encode different image representation spaces, we demonstrate a preliminary inductive transfer learning potential on multiscale experiments that incorporate edge-level details up to semantic-level information.
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title Exploiting Convolutional Representations for Multiscale Human Settlement Detection
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