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Computer Vision and Recognition · Awesome GitHub Repositories

2 repos

Awesome GitHub RepositoriesComputer Vision and Recognition

Explore 2 awesome GitHub repositories matching artificial intelligence & ml · Computer Vision and Recognition. Refine with filters or upvote what's useful.

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  6. Computer Vision and Recognition

Awesome Computer Vision and Recognition GitHub Repositories

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  • immich-app/immich

    immich-app/immich

    92,953GitHubView on GitHub↗

    Immich is a self-hosted media management platform designed to provide a centralized, private repository for photos and videos. It functions as a comprehensive system for organizing, backing up, and viewing personal media collections across mobile devices, web browsers, and external storage locations. By maintaining ful

    Refines facial recognition accuracy by iteratively adjusting detection thresholds and re-processing datasets to include previously unidentified faces.

    TypeScriptbackup-toolfluttergoogle-photos
  • ultralytics/yolov5

    ultralytics/yolov5

    56,830GitHubView on GitHub↗

    YOLOv5 is a comprehensive computer vision framework designed for end-to-end deep learning, specializing in real-time object detection, image classification, and instance segmentation. It provides a unified toolkit that manages the entire lifecycle of a model, from initial dataset configuration and hyperparameter tuning

    Fine-tunes computer vision models on specialized or proprietary datasets to recognize unique objects.

    Pythoncoremldeep-learningios

Explore sub-tags

  • Custom Vision TrainingTools and methods for fine-tuning computer vision models on specialized or proprietary datasets.
  • Facial Recognition RefinementAutomated workflows for iteratively adjusting detection thresholds and re-processing datasets to improve facial recognition accuracy.