Random Subwindows for Robust Image Classification 论文

2005引用 229
Advanced Image and Video Retrieval TechniquesImage Retrieval and Classification TechniquesDomain Adaptation and Few-Shot Learning

摘要

We present a novel, generic image classification method based on a recent machine learning algorithm (ensembles of extremely randomized decision trees). Images are classified using randomly extracted subwindows that are suitably normalized to yield robustness to certain image transformations. Our method is evaluated on four very different, publicly available datasets (COIL-100, ZuBuD, ETH-80, WANG). Our results show that our automatic approach is generic and robust to illumination, scale, and viewpoint changes. An extension of the method is proposed to improve its robustness with respect to rotation changes.