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Autori principali: Pillai, Nisha, Virupakshaiah, Aditi, Smith, Harrison W., Ashworth, Amanda J., Gowda, Prasanna, Owens, Phillip R., Rivers, Adam R., Nanduri, Bindu, Ramkumar, Mahalingam
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.10995
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author Pillai, Nisha
Virupakshaiah, Aditi
Smith, Harrison W.
Ashworth, Amanda J.
Gowda, Prasanna
Owens, Phillip R.
Rivers, Adam R.
Nanduri, Bindu
Ramkumar, Mahalingam
author_facet Pillai, Nisha
Virupakshaiah, Aditi
Smith, Harrison W.
Ashworth, Amanda J.
Gowda, Prasanna
Owens, Phillip R.
Rivers, Adam R.
Nanduri, Bindu
Ramkumar, Mahalingam
contents Animal health monitoring and population management are critical aspects of wildlife conservation and livestock management that increasingly rely on automated detection and tracking systems. While Unmanned Aerial Vehicle (UAV) based systems combined with computer vision offer promising solutions for non-invasive animal monitoring across challenging terrains, limited availability of labeled training data remains an obstacle in developing effective deep learning (DL) models for these applications. Transfer learning has emerged as a potential solution, allowing models trained on large datasets to be adapted for resource-limited scenarios such as those with limited data. However, the vast landscape of pre-trained neural network architectures makes it challenging to select optimal models, particularly for researchers new to the field. In this paper, we propose a reinforcement learning (RL)-based transfer learning framework that employs an upper confidence bound (UCB) algorithm to automatically select the most suitable pre-trained model for animal detection tasks. Our approach systematically evaluates and ranks candidate models based on their performance, streamlining the model selection process. Experimental results demonstrate that our framework achieves a higher detection rate while requiring significantly less computational time compared to traditional methods.
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id arxiv_https___arxiv_org_abs_2509_10995
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Policy-Driven Transfer Learning in Resource-Limited Animal Monitoring
Pillai, Nisha
Virupakshaiah, Aditi
Smith, Harrison W.
Ashworth, Amanda J.
Gowda, Prasanna
Owens, Phillip R.
Rivers, Adam R.
Nanduri, Bindu
Ramkumar, Mahalingam
Computer Vision and Pattern Recognition
Animal health monitoring and population management are critical aspects of wildlife conservation and livestock management that increasingly rely on automated detection and tracking systems. While Unmanned Aerial Vehicle (UAV) based systems combined with computer vision offer promising solutions for non-invasive animal monitoring across challenging terrains, limited availability of labeled training data remains an obstacle in developing effective deep learning (DL) models for these applications. Transfer learning has emerged as a potential solution, allowing models trained on large datasets to be adapted for resource-limited scenarios such as those with limited data. However, the vast landscape of pre-trained neural network architectures makes it challenging to select optimal models, particularly for researchers new to the field. In this paper, we propose a reinforcement learning (RL)-based transfer learning framework that employs an upper confidence bound (UCB) algorithm to automatically select the most suitable pre-trained model for animal detection tasks. Our approach systematically evaluates and ranks candidate models based on their performance, streamlining the model selection process. Experimental results demonstrate that our framework achieves a higher detection rate while requiring significantly less computational time compared to traditional methods.
title Policy-Driven Transfer Learning in Resource-Limited Animal Monitoring
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.10995