Inferring Ground Truth from Subjective Labelling of Venus Images 论文
1994CaltechAUTHORS (California Institute of Technology)引用 271
Anomaly Detection Techniques and ApplicationsGeochemistry and Geologic MappingRemote-Sensing Image Classification
摘要
In remote sensing applications "ground-truth" data is often used as the basis for training pattern recognition algorithms to generate thematic maps or to detect objects of interest. In practical situations, experts may visually examine the images and provide a subjective noisy estimate of the truth. Calibrating the reliability \nand bias of expert labellers is a non-trivial problem. In this paper we discuss some of our recent work on this topic in the context of detecting small volcanoes in Magellan SAR images of Venus. Empirical results (using the Expectation-Maximization procedure) suggest that accounting for subjective noise can be quite significant \nin terms of quantifying both human and algorithm detection \nperformance.