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Papers/CPlaNet: Enhancing Image Geolocalization by Combinatorial ...

CPlaNet: Enhancing Image Geolocalization by Combinatorial Partitioning of Maps

Paul Hongsuck Seo, Tobias Weyand, Jack Sim, Bohyung Han

2018-08-06ECCV 2018 9Photo geolocation estimation
PaperPDF

Abstract

Image geolocalization is the task of identifying the location depicted in a photo based only on its visual information. This task is inherently challenging since many photos have only few, possibly ambiguous cues to their geolocation. Recent work has cast this task as a classification problem by partitioning the earth into a set of discrete cells that correspond to geographic regions. The granularity of this partitioning presents a critical trade-off; using fewer but larger cells results in lower location accuracy while using more but smaller cells reduces the number of training examples per class and increases model size, making the model prone to overfitting. To tackle this issue, we propose a simple but effective algorithm, combinatorial partitioning, which generates a large number of fine-grained output classes by intersecting multiple coarse-grained partitionings of the earth. Each classifier votes for the fine-grained classes that overlap with their respective coarse-grained ones. This technique allows us to predict locations at a fine scale while maintaining sufficient training examples per class. Our algorithm achieves the state-of-the-art performance in location recognition on multiple benchmark datasets.

Results

TaskDatasetMetricValueModel
Image ClassificationIm2GPS3kCity level (25 km)26.5CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPS3kContinent level (2500 km)64.4CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPS3kCountry level (750 km)48.6CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPS3kRegion level (200 km)34.6CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPS3kStreet level (1 km)10.2CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPSCity level (25 km)37.1CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPSContinent level (2500 km)78.5CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPSCountry level (750 km)62CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPSRegion level (200 km)46.6CPlaNet (1-5, PlaNet)
Image ClassificationIm2GPSStreet level (1 km)16.5CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPS3kCity level (25 km)26.5CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPS3kContinent level (2500 km)64.4CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPS3kCountry level (750 km)48.6CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPS3kRegion level (200 km)34.6CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPS3kStreet level (1 km)10.2CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPSCity level (25 km)37.1CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPSContinent level (2500 km)78.5CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPSCountry level (750 km)62CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPSRegion level (200 km)46.6CPlaNet (1-5, PlaNet)
4K 60FpsIm2GPSStreet level (1 km)16.5CPlaNet (1-5, PlaNet)

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