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Main Authors: Sangiovanni, Gian Mario, Mastrantonio, Gianluca, Ventura, Daniele, Pollice, Alessio, Lasinio, Giovanna Jona
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.16447
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author Sangiovanni, Gian Mario
Mastrantonio, Gianluca
Ventura, Daniele
Pollice, Alessio
Lasinio, Giovanna Jona
author_facet Sangiovanni, Gian Mario
Mastrantonio, Gianluca
Ventura, Daniele
Pollice, Alessio
Lasinio, Giovanna Jona
contents In ecology, photogrammetry is a crucial method for efficiently collecting non-destructive samples of natural environments. When estimating the spatial distribution of animals, detecting objects in large-scale images becomes crucial. Object detection models enable large-scale analysis but introduce uncertainty because detection probability depends on various factors. To address detection bias, we model the distribution of a species of benthic animals (holothurians) in an area of the Italian Tyrrhenian coast near Giglio Island using a Thinned Log-Gaussian Cox Process (LGCP). We assume that a "true" intensity function accurately describes the distribution, while the observed process, resulting from independent thinning, is represented by a degraded intensity. The detection function controls the thinning mechanism, influenced by the object's location and other detection-related features. We use manual identification of holothurians as our benchmark. We compare automatic detection with this benchmark, an unthinned LGCP, and the thinned model to highlight the improvements gained from the proposed approach.Our method allows researchers to use photogrammetry, automatically identify objects of interest, and correct biases and approximations caused by the observation process.
format Preprint
id arxiv_https___arxiv_org_abs_2511_16447
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Integrating Deep Learning and Spatial Statistics in Marine Ecosystem Monitoring
Sangiovanni, Gian Mario
Mastrantonio, Gianluca
Ventura, Daniele
Pollice, Alessio
Lasinio, Giovanna Jona
Other Statistics
In ecology, photogrammetry is a crucial method for efficiently collecting non-destructive samples of natural environments. When estimating the spatial distribution of animals, detecting objects in large-scale images becomes crucial. Object detection models enable large-scale analysis but introduce uncertainty because detection probability depends on various factors. To address detection bias, we model the distribution of a species of benthic animals (holothurians) in an area of the Italian Tyrrhenian coast near Giglio Island using a Thinned Log-Gaussian Cox Process (LGCP). We assume that a "true" intensity function accurately describes the distribution, while the observed process, resulting from independent thinning, is represented by a degraded intensity. The detection function controls the thinning mechanism, influenced by the object's location and other detection-related features. We use manual identification of holothurians as our benchmark. We compare automatic detection with this benchmark, an unthinned LGCP, and the thinned model to highlight the improvements gained from the proposed approach.Our method allows researchers to use photogrammetry, automatically identify objects of interest, and correct biases and approximations caused by the observation process.
title Integrating Deep Learning and Spatial Statistics in Marine Ecosystem Monitoring
topic Other Statistics
url https://arxiv.org/abs/2511.16447