TY - JOUR A2 - Kokol, P. A2 - Hernandez, J. A. A2 - Zhu, S. A2 - Camastra, F. A2 - Wang, J. AU - Tsai, Chih-Fong PY - 2012 DA - 2012/11/29 TI - Bag-of-Words Representation in Image Annotation: A Review SP - 376804 VL - 2012 AB - Content-based image retrieval (CBIR) systems require users to query images by their low-level visual content; this not only makes it hard for users to formulate queries, but also can lead to unsatisfied retrieval results. To this end, image annotation was proposed. The aim of image annotation is to automatically assign keywords to images, so image retrieval users are able to query images by keywords. Image annotation can be regarded as the image classification problem: that images are represented by some low-level features and some supervised learning techniques are used to learn the mapping between low-level features and high-level concepts (i.e., class labels). One of the most widely used feature representation methods is bag-of-words (BoW). This paper reviews related works based on the issues of improving and/or applying BoW for image annotation. Moreover, many recent works (from 2006 to 2012) are compared in terms of the methodology of BoW feature generation and experimental design. In addition, several different issues in using BoW are discussed, and some important issues for future research are discussed. SN - null UR - https://doi.org/10.5402/2012/376804 DO - 10.5402/2012/376804 JF - ISRN Artificial Intelligence PB - International Scholarly Research Network KW - ER -