The paper introduces a framework for camel farm monitoring using a combination of automated annotation and fine-tune distillation. The Unified Auto-Annotation framework uses GroundingDINO and SAM to automatically annotate surveillance video data. The Fine-Tune Distillation framework then fine-tunes student models like YOLOv8, transferring knowledge from a larger teacher model, using data from Al-Marmoom Camel Farm in Dubai.
This paper introduces a self-supervised learning method for point cloud analysis using an upsampling autoencoder (UAE). The model uses subsampling and an encoder-decoder architecture to reconstruct the original point cloud, learning both semantic and geometric information. Experiments show the UAE outperforms existing methods in shape classification, part segmentation, and point cloud upsampling tasks.
This paper introduces an AI framework for autonomous assessment of student work, addressing policy gaps in academic practices. A survey of 117 academics from the UK, UAE, and Iraq reveals positive attitudes toward AI in education, particularly for autonomous assessment. The study also highlights a lack of awareness of modern AI tools among experienced academics, emphasizing the need for updated policies and training.