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QFabric: Multi-Task Change Detection Dataset

Sagar Verma, Akash Panigrahi, Siddharth Gupta

202123 citationsDOI

Abstract

Detecting change through multi-image, multi-date remote sensing is essential to developing and understanding of global conditions. Despite recent advancements in remote sensing realized through deep learning, novel methods for accurate multi-image change detection remain unrealized. Recently, several promising methods have been proposed to address this topic, but a paucity of publicly available data limits the methods that can be assessed. In particular, there exists limited work on categorizing the nature and status of change across an observation period.This paper introduces the first labeled dataset available for such a task. We present an open-source change detection dataset, termed QFabric, with 450,000 change polygons annotated across 504 locations in 100 different cities covering a wide range of geographies and urban fabrics. QFabric is a temporal multi-task dataset with 6 change types and 9 change status classes. The geography and environment metadata around each polygon provides context that can be leveraged to build robust deep neural networks. We apply multiple benchmarks on our dataset for change detection, change type and status classification tasks. Project page: https://sagarverma.github.io/qfabric

Topics & Concepts

Change detectionComputer scienceMetadataTask (project management)Context (archaeology)Deep learningPolygon (computer graphics)Artificial intelligenceMachine learningData miningData scienceGeographyWorld Wide WebFrame (networking)ManagementEconomicsArchaeologyTelecommunicationsRemote-Sensing Image ClassificationRemote Sensing and Land UseData-Driven Disease Surveillance
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