Title :
Selectively guiding visual concept discovery
Author :
Wigness, Maggie ; Draper, Bruce A. ; Beveridge, J. Ross
Author_Institution :
Colorado State Univ., Fort Collins, CO, USA
Abstract :
Labeling data to train visual concept classifiers requires significant human effort. Active learning addresses labeling overhead by selecting a meaningful subset of data, but often these approaches assume that the set of visual concepts is known in advance. Clustering approaches perform bottom-up discovery of concepts, and reduce labeling effort by moving from instance-based to group-based labeling. Unfortunately, clustering techniques assume a one-to-one mapping between clusters and visual concepts even though learned groups are often not coherent and fail to represent all concepts. We introduce Selective Guidance, a technique that hierarchically clusters data and selectively queries labels of coherent clusters representing different visual concepts. Unlike most active learning and clustering techniques, Selective Guidance does not require any a priori knowledge. Using benchmark data sets we show that Selective Guidance achieves classification accuracy better than active learning and clustering approaches with fewer labeling queries.
Keywords :
learning (artificial intelligence); pattern classification; pattern clustering; active learning; benchmark data sets; bottom-up concept discovery; clustering approaches; data clustering; data labeling; instance-based to group-based labeling; label querying; labeling effort reduction; labeling overhead; one-to-one mapping; selective guidance; visual concept classifiers; visual concept discovery; Accuracy; Clustering algorithms; Labeling; Testing; Training; Training data; Visualization;
Conference_Titel :
Applications of Computer Vision (WACV), 2014 IEEE Winter Conference on
Conference_Location :
Steamboat Springs, CO
DOI :
10.1109/WACV.2014.6836093