PhD defence
Integrating UAV-based LiDAR and 3D Computer Vision to Enhance Cattle Growth Monitoring in Precision Livestock Farming
Summary
This thesis explores the use of Unmanned Aerial Vehicles (UAVs) equipped with a LiDAR device to monitor cattle growth in Precision Livestock Farming (PLF). The research specifically targets semi-free-range cattle rearing environments, where beef cattle are provided with controlled feeding and management while retaining some mobility within confined areas. The primary objective is to develop accurate, non-intrusive methodologies for cattle body measurement retrieval, individual identification, and body weight estimation. Unlike traditional methods such as manual operations and transponders, which pose risks to both animals and humans, or two-dimensional imaging techniques, which are often affected by environmental factors (such as illumination) and occlusions, the three-dimensional (3D) approach offers significant advantages. It provides depth data, overcoming the limitations of 2D methods. Using the high-precision remote sensing capabilities of UAV-based LiDAR systems, this thesis demonstrates the potential of 3D approaches for significant improvements in PLF.