AI RESEARCH

An assessment of data-centric methods for label noise identification in remote sensing data sets

arXiv CS.CV

ArXi:2603.16835v1 Announce Type: new Label noise in the sense of incorrect labels is present in many real-world data sets and is known to severely limit the generalizability of deep learning models. In the field of remote sensing, however, automated treatment of label noise in data sets has received little attention to date. In particular, there is a lack of systematic analysis of the performance of data-centric methods that not only cope with label noise but also explicitly identify and isolate noisy labels.