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Image-Based Place Recognition on Bucolic Environment Across Seasons From Semantic Edge Description

Assia Benbihi, Stephanie Aravecchia, Matthieu Geist, Cedric Pradalier

202032 citationsDOIOpen Access PDF

Abstract

Most of the research effort on image-based place recognition is designed for urban environments. In bucolic environments such as natural scenes with low texture and little semantic content, the main challenge is to handle the variations in visual appearance across time such as illumination, weather, vegetation state or viewpoints. The nature of the variations is different and this leads to a different approach to describing a bucolic scene. We introduce a global image description computed from its semantic and topological information. It is built from the wavelet transforms of the image's semantic edges. Matching two images is then equivalent to matching their semantic edge transforms. This method reaches state-of-the-art image retrieval performance on two multi-season environment-monitoring datasets: the CMU-Seasons and the Symphony Lake dataset. It also generalizes to urban scenes on which it is on par with the current baselines NetVLAD and DELF.

Topics & Concepts

Artificial intelligenceComputer scienceMatching (statistics)Enhanced Data Rates for GSM EvolutionImage (mathematics)Computer visionTexture (cosmology)WaveletPattern recognition (psychology)Wavelet transformNatural (archaeology)Edge detectionSemantic propertySemantics (computer science)Natural language processingVegetation (pathology)Natural landscapeImage retrievalSemantic matchingGeographyImage matchingCartographySemantic analysis (machine learning)MathematicsCognitive neuroscience of visual object recognitionAdvanced Image and Video Retrieval TechniquesRemote-Sensing Image ClassificationVideo Surveillance and Tracking Methods
Image-Based Place Recognition on Bucolic Environment Across Seasons From Semantic Edge Description | Litcius