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Abstract

This paper explores the application of deep learning and image processing techniques for cattle disease detection and pose estimation, drawing insights from various research papers. The use of wearable sensors embedded in collars emerges as a prominent method for monitoring cattle behavior and health. These sensors, particularly accelerometers, effectively capture movement data, facilitating the identification of behaviors like grazing, resting, walking, and ruminating. Several studies utilize supervised machine learning algorithms such as Random Forest, Decision Trees, and Linear Discriminant Analysis to classify these behaviors with high accuracy. Further, deep learning models, especially Convolutional Neural Networks (CNNs), demonstrate remarkable capabilities in detecting specific cattle diseases.YOLOv5, known for its speed and accuracy, proves effective in cattle detection.Image preprocessing techniques,including grayscale conversion, noise removal, and data augmentation, enhance the accuracy and robustness of these models. Additionally,pose estimation techniques like OpenPifPaf, combined with angle calculations between joints, provide valuable insights into cattle posture and aid in the early detection of lameness. The integration of these advanced technologies presents a significant opportunity to advance precision livestock farming practices. Early disease detection and efficient behavior monitoring can contribute to improved animal welfare, optimized farm management, and enhanced productivity in the cattle industry.

Keywords

Artificial Intelligence, Feature Extraction, Deep Learning, Convolutional Neural Networks (CNNs)