Machine Learning in Farm Animal Behavior using Python
By Kleanthous, Natasa & Hussain, Abir
Record number: | 6927e |
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Machine Learning in Farm Animal Behavior using Python is a comprehensive guide to applying machine learning to animal behavior analysis, focusing on activity recognition in farm animals. It begins by introducing key concepts of animal behavior and ethology, followed by an exploration of machine learning techniques, including supervised, unsupervised, semi-supervised, and reinforcement learning. The practical section covers essential steps like data collection, preprocessing, exploratory data analysis, feature extraction, model training, and evaluation, using Python.
The book emphasizes the importance of high-quality data and discusses various sensors and annotation methods for effective data collection. It addresses key machine learning challenges such as generalization and data issues. Advanced topics include feature selection, model selection, hyperparameter tuning, and deep learning algorithms. Practical examples and Python implementations are provided throughout, offering hands-on experience for researchers, students, and professionals aiming to apply machine learning to animal behavior analysis.
1st Edition. 412 Pages, 6 Color & 62 B/W Illustrations. Get access to the individual chapters at Taylor & Francis eBooks.
ISBN: Hardback: 9781032628639, eBook: 9781032628738
Hardback: £170.00, eBook: £144.50 (6 Month Rental £93.50, 12 Month Rental £110.50)
Year: 2025
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