kumuji/ugains

[GCPR 2023] UGainS: Uncertainty Guided Anomaly Instance Segmentation

14
/ 100
Experimental

This project helps automotive engineers and quality control specialists automatically identify unusual or problematic objects in images. It takes raw image data, like car sensor output, and highlights unexpected items (e.g., debris, foreign objects) by drawing precise boundaries around them and indicating how anomalous each pixel within that object is. This is ideal for flagging potential issues on roads or in manufacturing processes.

No commits in the last 6 months.

Use this if you need to automatically detect and precisely outline unexpected objects or defects in visual data, such as images from autonomous vehicles or factory inspection cameras.

Not ideal if you need to detect anomalies in non-image data, or if you only need a general alert without specific object boundaries and pixel-level anomaly scores.

automotive quality control manufacturing inspection autonomous vehicle perception industrial anomaly detection visual defect analysis
No License Stale 6m No Package No Dependents
Maintenance 0 / 25
Adoption 6 / 25
Maturity 8 / 25
Community 0 / 25

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Language

Python

License

Last pushed

Jul 31, 2024

Commits (30d)

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