K-Means Food Object Clustering and Feature Detection using MSERF and SURF Region Points

S. Anusuya, K. Sharmila
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Abstract

Obesity is a perilous consumer of human lives, and is addressed with growing concerns globally. One of the primary reasons for the origination of surgical studies in Bariatrics is the consumption of unhealthy and indolent practices. Multifaceted literary studies are associated with gremlins of the human body, along with food calorie recognition methods. Most commonly many of the health hazards arise with food regimen that individuals choose to consume. Therefore, identification and anatomization of the food and calorie intake is a cardinal aspect which requires meticulous approaches. The whilom approaches relating to food calorie identification and segmentation have been implemented with K-means clustering and color space segmentation approaches. However, this study focuses on the food image enhancement, feature identification and clustering using MSERF and SURF detection parameters. The proposed work also ensures that the implemented work forms a strong pre-processing method to better accuracy of classification for further stages of study. The indagated study is simulated using MATLAB and the results are successfully acquired.
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使用MSERF和SURF区域点的K-Means食物对象聚类和特征检测
肥胖是人类生命的危险消耗者,在全球范围内受到越来越多的关注。在减肥术中开展外科研究的主要原因之一是不健康和懒惰的做法。多方面的文学研究与人体的小妖精有关,与食物卡路里识别方法有关。最常见的是,许多健康危害都是由个人选择的饮食方式引起的。因此,对食物和热量摄入的识别和解剖是一个重要的方面,需要细致的方法。与食物卡路里识别和分割有关的传统方法已通过k -均值聚类和颜色空间分割方法实现。然而,本研究的重点是利用MSERF和SURF检测参数对食品图像进行增强、特征识别和聚类。建议的工作还确保实施的工作形成一个强大的预处理方法,以提高分类的准确性,为进一步的研究阶段。利用MATLAB对该研究进行了仿真,并取得了成功的结果。
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