Analysis of Biological Images and Quantitative Monitoring Using Deep Learning and Computer Vision
Aaron Gálvez-Salido, Francisca Robles, Rodrigo J. Gonçalves, Roberto de la Herrán, Carmelo Ruiz Rejón, Rafael Navajas-Pérez

TL;DR
This paper reviews how deep learning and computer vision are used to automate biological counting for wildlife monitoring and biodiversity assessments.
Contribution
The paper evaluates methodological paradigms and challenges in deep learning for automated biological counting across diverse platforms.
Findings
Deep learning methods achieve over 95% accuracy in counting various taxa using platforms like camera traps and UAVs.
Challenges include object occlusion, cryptic species differentiation, and lack of high-quality labeled datasets.
Future improvements require self-supervised learning and better data augmentation for robust ecological monitoring.
Abstract
Automated biological counting is essential for scaling wildlife monitoring and biodiversity assessments, as manual processing currently limits analytical effort and scalability. This review evaluates the integration of deep learning and computer vision across diverse acquisition platforms, including camera traps, unmanned aerial vehicles (UAVs), and remote sensing. Methodological paradigms ranging from Convolutional Neural Networks (CNNs) and one-stage detectors like You Only Look Once (YOLO) to recent transformer-based architectures and hybrid models are examined. The literature shows that these methods consistently achieve high accuracy—often exceeding 95%—across various taxa, including insect pests, aquatic organisms, terrestrial vegetation, and forest ecosystems. However, persistent challenges such as object occlusion, cryptic species differentiation, and the scarcity of…
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Taxonomy
TopicsAdvanced Neural Network Applications · Cell Image Analysis Techniques · Environmental DNA in Biodiversity Studies
