He Y, Khanna N, Boushey C J, Delp E J
School of Electrical and Computer Engineering, Purdue University.
Cancer Epidemiology Program, University of Hawaii Cancer Center.
IEEE Int Conf Multimed Expo Workshops. 2012 Jul;2012:424-428. doi: 10.1109/ICMEW.2012.80. Epub 2012 Aug 16.
Traditional dietary assessment methods, consisting of written and orally reported methods, are not widely acceptable or feasible for everyday monitoring. The development of builtin cameras for mobile devices provides a new way of collecting dietary information by acquiring images of foods and beverages. The ability of image analysis techniques to automatically segment and identify food items from food images becomes imperative. Food images, usually consisting of plates, bowls and glasses, are often affected by lighting and specular highlights which present difficulties for image analysis. In this paper, we propose a novel single-image specular highlight removal method to detect and remove specular highlights in food images. We use independent components analysis (ICA) to separate the specular and diffuse components from the original image using only one image. This paper describes the details of the proposed model and also presents experimental results on food images to demonstrate the effectiveness of our approach.
传统的饮食评估方法,包括书面报告和口头报告方法,在日常监测中并不被广泛接受或可行。移动设备内置摄像头的发展为通过获取食物和饮料的图像来收集饮食信息提供了一种新方法。图像分析技术从食物图像中自动分割和识别食物项目的能力变得至关重要。食物图像通常由盘子、碗和杯子组成,经常受到光照和镜面高光的影响,这给图像分析带来了困难。在本文中,我们提出了一种新颖的单图像镜面高光去除方法,以检测和去除食物图像中的镜面高光。我们使用独立成分分析(ICA)仅通过一张图像从原始图像中分离出镜面和漫射成分。本文描述了所提出模型的细节,并展示了在食物图像上的实验结果,以证明我们方法的有效性。