Diet is an important aspect of our health. Good dietary habits can contribute to the prevention of many diseases and improve the overall quality of life. To better understand the relationship between diet and health, image-based dietary assessment systems have been developed to collect dietary information. We introduce the Automatic Ingestion Monitor (AIM), a device that can be attached to one's eye glasses. It provides an automated hands-free approach to capture eating scene images. While AIM has several advantages, images captured by the AIM are sometimes blurry. Blurry images can significantly degrade the performance of food image analysis such as food detection. In this paper, we propose an approach to pre-process images collected by the AIM imaging sensor by rejecting extremely blurry images to improve the performance of food detection.
翻译:良好的饮食习惯有助于预防许多疾病,改善总体生活质量。为了更好地了解饮食与健康之间的关系,已经开发了基于图像的饮食评估系统,以收集饮食信息。我们引入了自动摄入监测器(AIM),这是一个可以附在眼睛眼镜上的装置。它提供了一种自动的无手方法来捕捉食现场图像。虽然AIM有若干优点,但AIM拍摄的图像有时模糊不清。Blurrry图像可以显著地降低食品图像分析(如食品检测)的性能。在本文件中,我们建议采用一种方法,通过拒绝极模糊的图像来改进食品检测的性能来处理AIM成像传感器收集的预处理图像。