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Autores principales: Kumar, Ashutosh, Kaushal, Sarthak, Murthy, Shiv Vignesh
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2410.11118
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author Kumar, Ashutosh
Kaushal, Sarthak
Murthy, Shiv Vignesh
author_facet Kumar, Ashutosh
Kaushal, Sarthak
Murthy, Shiv Vignesh
contents This paper compares scale-invariant (SIFT) and scale-variant (ORB) feature detection methods, alongside our novel feature detector, IntFeat, specifically applied to lunar imagery. We evaluate these methods using low (128x128) and high-resolution (1024x1024) lunar image patches, providing insights into their performance across scales in challenging extraterrestrial environments. IntFeat combines high-level features from SIFT and low-level features from ORB into a single vector space for robust lunar image registration. We introduce SyncVision, a Python package that compares lunar images using various registration methods, including SIFT, ORB, and IntFeat. Our analysis includes upscaling low-resolution lunar images using bi-linear and bi-cubic interpolation, offering a unique perspective on registration effectiveness across scales and feature detectors in lunar landscapes. This research contributes to computer vision and planetary science by comparing feature detection methods for lunar imagery and introducing a versatile tool for lunar image registration and evaluation, with implications for multi-resolution image analysis in space exploration applications.
format Preprint
id arxiv_https___arxiv_org_abs_2410_11118
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MoonMetaSync: Lunar Image Registration Analysis
Kumar, Ashutosh
Kaushal, Sarthak
Murthy, Shiv Vignesh
Computer Vision and Pattern Recognition
Artificial Intelligence
Algebraic Geometry
This paper compares scale-invariant (SIFT) and scale-variant (ORB) feature detection methods, alongside our novel feature detector, IntFeat, specifically applied to lunar imagery. We evaluate these methods using low (128x128) and high-resolution (1024x1024) lunar image patches, providing insights into their performance across scales in challenging extraterrestrial environments. IntFeat combines high-level features from SIFT and low-level features from ORB into a single vector space for robust lunar image registration. We introduce SyncVision, a Python package that compares lunar images using various registration methods, including SIFT, ORB, and IntFeat. Our analysis includes upscaling low-resolution lunar images using bi-linear and bi-cubic interpolation, offering a unique perspective on registration effectiveness across scales and feature detectors in lunar landscapes. This research contributes to computer vision and planetary science by comparing feature detection methods for lunar imagery and introducing a versatile tool for lunar image registration and evaluation, with implications for multi-resolution image analysis in space exploration applications.
title MoonMetaSync: Lunar Image Registration Analysis
topic Computer Vision and Pattern Recognition
Artificial Intelligence
Algebraic Geometry
url https://arxiv.org/abs/2410.11118