Automatic image processing is a common task in many scientific and technological fields such as life sciences (with medical imaging), satellite imaging, etc. While machine learning is often used for efficient processing of such data sets, building a high-quality training set is an important task. Specialized software (such as rootpainter, ilastik) exist in different communities to build such training sets thanks to user annotations drawn on images. In this talk, I will show how to use the open-source libraries plotly and dash to build custom interactive applications for interactive image annotation, and how to combine these tools with libraries such as scikit-image or machine learning/deep learning libraries for building a whole image processing pipeline.
Automatic image processing is a common task in many scientific and technological fields such as life sciences (with medical imaging), satellite imaging, etc. While machine learning is often used for efficient processing of such data sets, building a high-quality training set is an important task. Specialized software (such as rootpainter, ilastik) exist in different communities to build such training sets thanks to user annotations drawn on images. In this talk, I will show how to use the open-source libraries plotly and dash to build custom interactive applications for interactive image annotation, and how to combine these tools with libraries such as scikit-image or machine learning/deep learning libraries for building a whole image processing pipeline.
Speakers: Emmanuelle Gouillart