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Bibliographic Details
Main Authors: Markoff, Hugo, Galaktionovs, Jevgenijs
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.14594
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author Markoff, Hugo
Galaktionovs, Jevgenijs
author_facet Markoff, Hugo
Galaktionovs, Jevgenijs
contents State-of-the-art animal classification models like SpeciesNet provide predictions across thousands of species but use conservative rollup strategies, resulting in many animals labeled at high taxonomic levels rather than species. We present a hierarchical re-classification system for the Animal Detect platform that combines SpeciesNet EfficientNetV2-M predictions with CLIP embeddings and metric learning to refine high-level taxonomic labels toward species-level identification. Our five-stage pipeline (high-confidence acceptance, bird override, centroid building, triplet-loss metric learning, and adaptive cosine-distance scoring) is evaluated on a segment of the LILA BC Desert Lion Conservation dataset (4,018 images, 15,031 detections). After recovering 761 bird detections from "blank" and "animal" labels, we re-classify 456 detections labeled animal, mammal, or blank with 96.5% accuracy, achieving species-level identification for 64.9 percent
format Preprint
id arxiv_https___arxiv_org_abs_2510_14594
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hierarchical Re-Classification: Combining Animal Classification Models with Vision Transformers
Markoff, Hugo
Galaktionovs, Jevgenijs
Computer Vision and Pattern Recognition
State-of-the-art animal classification models like SpeciesNet provide predictions across thousands of species but use conservative rollup strategies, resulting in many animals labeled at high taxonomic levels rather than species. We present a hierarchical re-classification system for the Animal Detect platform that combines SpeciesNet EfficientNetV2-M predictions with CLIP embeddings and metric learning to refine high-level taxonomic labels toward species-level identification. Our five-stage pipeline (high-confidence acceptance, bird override, centroid building, triplet-loss metric learning, and adaptive cosine-distance scoring) is evaluated on a segment of the LILA BC Desert Lion Conservation dataset (4,018 images, 15,031 detections). After recovering 761 bird detections from "blank" and "animal" labels, we re-classify 456 detections labeled animal, mammal, or blank with 96.5% accuracy, achieving species-level identification for 64.9 percent
title Hierarchical Re-Classification: Combining Animal Classification Models with Vision Transformers
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.14594