| Literature DB >> 24944506 |
Hsin-Chen Chen1, Wenyan Jia2, Zhaoxin Li3, Yung-Nien Sun4, Mingui Sun5.
Abstract
Image-based dietary assessment is important for health monitoring and management because it can provide quantitative and objective information, such as food volume, nutrition type, and calorie intake. In this paper, a new framework, 3D/2D model-to-image registration, is presented for estimating food volume from a single-view 2D image containing a reference object (i.e., a circular dining plate). First, the food is segmented from the background image based on Otsu's thresholding and morphological operations. Next, the food volume is obtained from a user-selected, 3D shape model. The position, orientation and scale of the model are optimized by a model-to-image registration process. Then, the circular plate in the image is fitted and its spatial information is used as constraints for solving the registration problem. Our method takes the global contour information of the shape model into account to obtain a reliable food volume estimate. Experimental results using regularly shaped test objects and realistically shaped food models with known volumes both demonstrate the effectiveness of our method.Entities:
Year: 2012 PMID: 24944506 PMCID: PMC4058710 DOI: 10.1109/NEBC.2012.6206979
Source DB: PubMed Journal: Proc IEEE Annu Northeast Bioeng Conf ISSN: 1071-121X