An Experiment on Animal Re-Identification from Video

Research output: Contribution to journalArticlepeer-review

Standard Standard

An Experiment on Animal Re-Identification from Video. / Kuncheva, Ludmila; Garrido-Labrador, Jose; Ramos-Perez, Ismael et al.
In: Ecological Informatics, 01.05.2023.

Research output: Contribution to journalArticlepeer-review

HarvardHarvard

Kuncheva, L, Garrido-Labrador, J, Ramos-Perez, I, Hennessey, S & Rodriguez, J 2023, 'An Experiment on Animal Re-Identification from Video', Ecological Informatics. https://doi.org/10.1016/j.ecoinf.2023.101994

APA

Kuncheva, L., Garrido-Labrador, J., Ramos-Perez, I., Hennessey, S., & Rodriguez, J. (2023). An Experiment on Animal Re-Identification from Video. Ecological Informatics. https://doi.org/10.1016/j.ecoinf.2023.101994

CBE

Kuncheva L, Garrido-Labrador J, Ramos-Perez I, Hennessey S, Rodriguez J. 2023. An Experiment on Animal Re-Identification from Video. Ecological Informatics. https://doi.org/10.1016/j.ecoinf.2023.101994

MLA

VancouverVancouver

Kuncheva L, Garrido-Labrador J, Ramos-Perez I, Hennessey S, Rodriguez J. An Experiment on Animal Re-Identification from Video. Ecological Informatics. 2023 May 1. Epub 2023 Jan 19. doi: 10.1016/j.ecoinf.2023.101994

Author

Kuncheva, Ludmila ; Garrido-Labrador, Jose ; Ramos-Perez, Ismael et al. / An Experiment on Animal Re-Identification from Video. In: Ecological Informatics. 2023.

RIS

TY - JOUR

T1 - An Experiment on Animal Re-Identification from Video

AU - Kuncheva, Ludmila

AU - Garrido-Labrador, Jose

AU - Ramos-Perez, Ismael

AU - Hennessey, Samuel

AU - Rodriguez, Juan

PY - 2023/5/1

Y1 - 2023/5/1

N2 - In the face of the global concern about climate change and endangered ecosystems, monitoring individual animals is of paramount importance. Computer vision methods for animal recognition and re-identification from video or image collections are a modern alternative to more traditional but intrusive methods such as tagging or branding. While there are many studies reporting results on various animal re-identification databases, there is a notable lack of comparative studies between different classification methods. In this paper we offer a comparison of 25 classification methods including linear, non-linear and ensemble models, as well as deep learning networks. Since the animal databases are vastly different in characteristics and difficulty, we propose an experimental protocol that can be applied to a chosen data collections. We use a publicly available database of five video clips, each containing multiple identities (9 to 27), where the animals are typically present as a group in each video frame. Our experiment involves five data representations: colour, shape, texture, and two feature spaces extracted by deep learning. In our experiments, simpler models (linear classifiers) and just colour feature space gave the best classification accuracy, demonstrating the importance of running a comparative study before resorting to complex, time-consuming, and potentially less robust methods.

AB - In the face of the global concern about climate change and endangered ecosystems, monitoring individual animals is of paramount importance. Computer vision methods for animal recognition and re-identification from video or image collections are a modern alternative to more traditional but intrusive methods such as tagging or branding. While there are many studies reporting results on various animal re-identification databases, there is a notable lack of comparative studies between different classification methods. In this paper we offer a comparison of 25 classification methods including linear, non-linear and ensemble models, as well as deep learning networks. Since the animal databases are vastly different in characteristics and difficulty, we propose an experimental protocol that can be applied to a chosen data collections. We use a publicly available database of five video clips, each containing multiple identities (9 to 27), where the animals are typically present as a group in each video frame. Our experiment involves five data representations: colour, shape, texture, and two feature spaces extracted by deep learning. In our experiments, simpler models (linear classifiers) and just colour feature space gave the best classification accuracy, demonstrating the importance of running a comparative study before resorting to complex, time-consuming, and potentially less robust methods.

KW - Animal re-identification

KW - Computer vision

KW - Classification

KW - Convolutional networks

KW - Comparative study

U2 - 10.1016/j.ecoinf.2023.101994

DO - 10.1016/j.ecoinf.2023.101994

M3 - Article

JO - Ecological Informatics

JF - Ecological Informatics

SN - 1574-9541

ER -