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Noisy Labels
Improve your labels with AI

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Introducing

Noisy Labels: Mastering Data Imperfection for Superior Learning

Noisy Labels tackles instance-dependent noise (IDN) in datasets by identifying and correcting mislabeled data, improving prediction accuracy.

IDN poses a substantial hurdle in machine learning, where label accuracy can vary depending on specific content within an image, rendering certain labels more susceptible to errors due to ambiguous or inadequate visual information. Dealing with IDN is crucial in machine learning tasks because inaccuracies in the labels can significantly impact the performance and reliability of trained models.


Noisy Labels is engineered to confront the challenge of learning from datasets plagued by IDN within their labels. By autonomously detecting and rectifying mislabelled data, it notably enhances the precision and dependability of predictions.

  • Innovative Graphical Modelling for Enhanced Label Accuracy: Noisy Labels introduces a pioneering graphical modelling approach, blending generative and discriminative models to adeptly navigate instance-dependent noise.
  • Superior Performance Across Varied Datasets: Showcasing outstanding outcomes across an array of IDN benchmarks, encompassing both synthetic and real-world datasets.
  • State-of-the-Art Results for Unseen Data Categories: By achieving remarkable accuracy on unseen classes, Noisy Labels equips businesses with a resilient tool for adapting to evolving data landscapes.

Pairing this innovative technology with Label Studio, an open-source data labelling platform with support for image classification tasks, putting cutting edge research in the hands of users.


Through seamless integration, users can now enjoy two key benefits:

  • Improved Labelling Efficiency: By uploading existing labelled datasets into Label Studio and leveraging the Noisy Labels plugin, users can automatically detect and correct noisy labels. This reduces the need for manual inspection and enhances the overall quality of labelling output.
  • Streamlined Labelling Process: When starting new labelling projects, the Noisy Labels plugin can pre-annotate examples, allowing human annotators to focus solely on validation and submission. This simplifies the labelling process, saving time and resources.

Noisy Labels confronts the challenge of training models on flawed datasets, offering a substantial advantage in scenarios where securing clean, error-free data proves challenging or expensive. Try Noisy Labels now and upgrade your labelling process today!

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