Home » Case Study » CCTV Traffic Scene Sematic Segmentation Dataset
Our goal was to develop a comprehensive dataset derived from CCTV traffic scenes, specifically designed for semantic segmentation tasks in machine learning. This dataset is unique in its aim to precisely identify and classify each pixel in an image based on its associated object or area.
Collection of diverse traffic scenes from CCTV cameras and high-quality pixel-wise annotation to classify every segment of the image.
Automated Segmentation Models:Â Used pre-trained models to cross-verify manual annotations.
Expert Review:Â A team of experts reviewed challenging segments for accuracy.
Inter-annotator Agreement:Â Several annotators reviewed the same image, ensuring pixel-wise consistency.
The CCTV Traffic Scene Semantic Segmentation Dataset has been meticulously crafted to ensure high precision in every pixel. It offers a comprehensive view of various traffic scenes, ensuring versatility and depth for researchers and developers in the field of computer vision.
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