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引用次数: 10
摘要
由于饮食文化、宗教、过敏和食物不耐受,我们必须找到一个好的系统来帮助我们识别我们的食物。在本文中,我们提出了基于SURF检测特征的特征袋(BoF)来识别食物和显示成分的方法。在SURF特征检测的同时,我们还提出了bag of SURF特征和bag-of HOG特征来识别食品。在实验中,我们在一个包含10个类别的小型食品图像数据集上实现了高达72%的准确率。我们的实验表明,在现有的方法中,所提出的表示在识别食物方面是非常准确的。此外,使用更多的图像增强视觉数据集将提高准确率,特别是对于具有高多样性的类别。
Food Image Recognition by Using Bag-of-SURF Features and HOG Features
Due to food culture, religion, allergy and food intolerance we have to find a good system to help us recognize our food. In this paper, we propose methods to recognize food and to show the ingredients using a bag-of-features (BoF) based on SURF detection features. We also propose bag of SURF features and bag-of HOG Features at the same time with the SURF feature detection to recognize the food items. In the experiment, we have achieved up to 72% of accuracy rate on a small food image dataset of 10 categories. Our experiments show that the proposed representation is significantly accurate at identifying food in the existing methods. Moreover, the enhancement of the visual dataset with more images will improve the accuracy rates, especially for the classes with high diversity.