COMBINING GLOBAL AND LOCAL FEATURES FOR FOOD IDENTIFICATION IN DIETARY ASSESSMENT

Proc Int Conf Image Proc. 2011 Sep:2011:1789-1792. doi: 10.1109/ICIP.2011.6115809. Epub 2011 Dec 29.

Abstract

Many chronic diseases, such as heart diseases, diabetes, and obesity, can be related to diet. Hence, the need to accurately measure diet becomes imperative. We are developing methods to use image analysis tools for the identification and quantification of food consumed at a meal. In this paper we describe a new approach to food identification using several features based on local and global measures and a "voting" based late decision fusion classifier to identify the food items. Experimental results on a wide variety of food items are presented.

Keywords: Feature extraction; image analysis; image texture; object recognition; supervised learning.