| Literature DB >> 30202237 |
Yu Wang1, Ye He2, Carol J Boushey3, Fengqing Zhu1, Edward J Delp1.
Abstract
Dietary assessment is essential for understanding the link between diet and health. We develop a context based image analysis system for dietary assessment to automatically segment, identify and quantify food items from images. In this paper, we describe image segmentation and object classification methods used in our system to detect and identify food items. We then use context information to refine the classification results. We define contextual dietary information as the data that is not directly produced by the visual appearance of an object in the image, but yields information about a user's diet or can be used for diet planning. We integrate contextual dietary information that a user supplies to the system either explicitly or implicitly to correct potential misclassifications. We evaluate our models using food image datasets collected during dietary assessment studies from natural eating events.Entities:
Keywords: context information; dietary assessment; image analysis; image segmentation; object classification
Year: 2017 PMID: 30202237 PMCID: PMC6127862 DOI: 10.1007/s11042-017-5346-x
Source DB: PubMed Journal: Multimed Tools Appl ISSN: 1380-7501 Impact factor: 2.757