A semi-automated food voting classification system: Combining user interaction and Support Vector Machines

Patrick McAllister, Huiru Zheng, R. Bond, A. Moorhead
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引用次数: 1

Abstract

Obesity is prevalent worldwide including UK and Ireland, affecting all demographics. Obesity can have a detrimental affect on an individual's health, which can lead to chronic conditions. Different digital interventions have enabled users to photograph food items to be identified using different feature extraction methods. In this research, we proposed a system that allows users to draw a polygon around a food item for segmentation. After segmented, the region is then classified using an automated voting system. Different features will then be extracted from the specified area. Support Vector Machines will be issued for each feature type. This system is a proof-of-concept and is designed to research the effectiveness of employing multiple feature detection algorithms to classify food images. To classify food regions a Bag-of-features (BoFs) approach will be used for each. Speeded Up Robust Features point detection and descriptors was used along with colour spatial features, and also MSER region detection with SURF. Each of these methods will have their own BoF to train an SVM. The aim of this research was to create a voting classification system that utilises each feature detection algorithm to ultimately identify the segmented food region through plurality (or majority) vote. Testing showed that the system achieved 75% accuracy when combining each feature SVM to create a voting system. The system outperforms two of the feature classifiers (SURF and MSER with SURF). LAB colour classifier slightly outperformed the voting mechanism within the developed system. In regards to future work, further development and testing would be completed through increasing the variety of food items used in the training phase and a larger test dataset would also be used.
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一种半自动食品投票分类系统:结合用户交互和支持向量机
肥胖在包括英国和爱尔兰在内的世界范围内普遍存在,影响着所有人口统计数据。肥胖会对个人健康产生不利影响,可能导致慢性疾病。不同的数字干预使用户能够使用不同的特征提取方法拍摄食物。在这项研究中,我们提出了一个系统,允许用户在食物周围画一个多边形进行分割。分割后,该地区然后使用自动投票系统进行分类。然后从指定区域提取不同的特征。支持向量机将针对每种特征类型发布。该系统是一个概念验证,旨在研究采用多种特征检测算法对食物图像进行分类的有效性。为了对食物区域进行分类,将对每个区域使用特征袋(bfs)方法。利用快速鲁棒特征点检测和描述符与色彩空间特征结合,利用SURF对MSER区域进行检测。每种方法都有自己的BoF来训练支持向量机。本研究的目的是创建一个投票分类系统,该系统利用每个特征检测算法,最终通过多数(或多数)投票来识别分割的食物区域。测试表明,将各特征支持向量机组合成投票系统,准确率达到75%。该系统优于两个特征分类器(SURF和带有SURF的MSER)。LAB颜色分类器在发达系统中的表现略优于投票机制。关于未来的工作,将通过增加训练阶段使用的食物种类来完成进一步的开发和测试,并且还将使用更大的测试数据集。
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