Conformal Prediction for Computer Vision
In today’s fast-paced world, computer vision has grown beyond mere image recognition to be a fundamental cornerstone in numerous real-world applications. From self-driving cars navigating bustling streets to medical imaging systems that detect early signs of diseases, the demand for reliable and accurate computer vision models has never been higher. However, with the increasing complexity of these systems and their applications, a critical need arises for the ability to quantify the uncertainty associated with their predictions.
Enter conformal prediction, a ground-breaking framework that offers a robust means to encapsulate the uncertainty inherent in machine learning models. While traditional computer vision models often produce a singular prediction, the true power of conformal prediction lies in its ability to provide a set of possible outcomes, each backed by a confidence level. This offers practitioners a more informed, nuanced...