Saved in:
Bibliographic Details
Main Authors: Gevaert, Caroline M., Pedro, Alexandra Aguiar, Ku, Ou, Cheng, Hao, Chandramouli, Pranav, Javan, Farzaneh Dadrass, Nattino, Francesco, Georgievska, Sonja
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.00684
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915001835454464
author Gevaert, Caroline M.
Pedro, Alexandra Aguiar
Ku, Ou
Cheng, Hao
Chandramouli, Pranav
Javan, Farzaneh Dadrass
Nattino, Francesco
Georgievska, Sonja
author_facet Gevaert, Caroline M.
Pedro, Alexandra Aguiar
Ku, Ou
Cheng, Hao
Chandramouli, Pranav
Javan, Farzaneh Dadrass
Nattino, Francesco
Georgievska, Sonja
contents Deep Learning methods are notorious for relying on extensive labeled datasets to train and assess their performance. This can cause difficulties in practical situations where models should be trained for new applications for which very little data is available. While few-shot learning algorithms can address the first problem, they still lack sufficient explanations for the results. This research presents a workflow that tackles both challenges by proposing an explainable few-shot learning workflow for detecting invasive and exotic tree species in the Atlantic Forest of Brazil using Unmanned Aerial Vehicle (UAV) images. By integrating a Siamese network with explainable AI (XAI), the workflow enables the classification of tree species with minimal labeled data while providing visual, case-based explanations for the predictions. Results demonstrate the effectiveness of the proposed workflow in identifying new tree species, even in data-scarce conditions. With a lightweight backbone, e.g., MobileNet, it achieves a F1-score of 0.86 in 3-shot learning, outperforming a shallow CNN. A set of explanation metrics, i.e., correctness, continuity, and contrastivity, accompanied by visual cases, provide further insights about the prediction results. This approach opens new avenues for using AI and UAVs in forest management and biodiversity conservation, particularly concerning rare or under-studied species.
format Preprint
id arxiv_https___arxiv_org_abs_2411_00684
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Explainable few-shot learning workflow for detecting invasive and exotic tree species
Gevaert, Caroline M.
Pedro, Alexandra Aguiar
Ku, Ou
Cheng, Hao
Chandramouli, Pranav
Javan, Farzaneh Dadrass
Nattino, Francesco
Georgievska, Sonja
Machine Learning
Deep Learning methods are notorious for relying on extensive labeled datasets to train and assess their performance. This can cause difficulties in practical situations where models should be trained for new applications for which very little data is available. While few-shot learning algorithms can address the first problem, they still lack sufficient explanations for the results. This research presents a workflow that tackles both challenges by proposing an explainable few-shot learning workflow for detecting invasive and exotic tree species in the Atlantic Forest of Brazil using Unmanned Aerial Vehicle (UAV) images. By integrating a Siamese network with explainable AI (XAI), the workflow enables the classification of tree species with minimal labeled data while providing visual, case-based explanations for the predictions. Results demonstrate the effectiveness of the proposed workflow in identifying new tree species, even in data-scarce conditions. With a lightweight backbone, e.g., MobileNet, it achieves a F1-score of 0.86 in 3-shot learning, outperforming a shallow CNN. A set of explanation metrics, i.e., correctness, continuity, and contrastivity, accompanied by visual cases, provide further insights about the prediction results. This approach opens new avenues for using AI and UAVs in forest management and biodiversity conservation, particularly concerning rare or under-studied species.
title Explainable few-shot learning workflow for detecting invasive and exotic tree species
topic Machine Learning
url https://arxiv.org/abs/2411.00684