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Food Image Recognition via Superpixel Based Low-Level and Mid-Level Distance Coding for Smart Home Applications

机译:通过基于超像素的中低距离编码实现智能家居应用中的食物图像识别

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Food image recognition is a key enabler for many smart home applications such as smart kitchen and smart personal nutrition log. In order to improve living experience and life quality, smart home systems collect valuable insights of users’ preferences, nutrition intake and health conditions via accurate and robust food image recognition. In addition, efficiency is also a major concern since many smart home applications are deployed on mobile devices where high-end GPUs are not available. In this paper, we investigate compact and efficient food image recognition methods, namely low-level and mid-level approaches. Considering the real application scenario where only limited and noisy data are available, we first proposed a superpixel based Linear Distance Coding (LDC) framework where distinctive low-level food image features are extracted to improve performance. On a challenging small food image dataset where only 12 training images are available per category, our framework has shown superior performance in both accuracy and robustness. In addition, to better model deformable food part distribution, we extend LDC’s feature-to-class distance idea and propose a mid-level superpixel food parts-to-class distance mining framework. The proposed framework show superior performance on a benchmark food image datasets compared to other low-level and mid-level approaches in the literature.
机译:食物图像识别是许多智能家居应用(例如智能厨房和智能个人营养日志)的关键推动力。为了改善生活体验和生活质量,智能家居系统通过准确而强大的食物图像识别来收集有关用户偏好,营养摄入和健康状况的宝贵见解。此外,效率也是一个主要问题,因为许多智能家居应用程序已部署在无法使用高端GPU的移动设备上。在本文中,我们研究了紧凑有效的食物图像识别方法,即低级和中级方法。考虑到只有有限且嘈杂的数据可用的实际应用场景,我们首先提出了一个基于超像素的线性距离编码(LDC)框架,该框架中提取了独特的低级食物图像特征以提高性能。在一个具有挑战性的小型食品图像数据集上,每个类别仅提供12张训练图像,我们的框架在准确性和鲁棒性方面均表现出卓越的性能。此外,为了更好地建模可变形食物零件的分布,我们扩展了LDC的特征到类的距离概念,并提出了一个中级超像素食物零件到类的距离挖掘框架。与文献中的其他低层和中层方法相比,所提出的框架在基准食物图像数据集上显示出优异的性能。

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