Active labeling application applied to food-related object recognition

Marc Bolaños, M. Garolera, P. Radeva
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引用次数: 14

Abstract

Every day, lifelogging devices, available for recording different aspects of our daily life, increase in number, quality and functions, just like the multiple applications that we give to them. Applying wearable devices to analyse the nutritional habits of people is a challenging application based on acquiring and analyzing life records in long periods of time. However, to extract the information of interest related to the eating patterns of people, we need automatic methods to process large amount of life-logging data (e.g. recognition of food-related objects). Creating a rich set of manually labeled samples to train the algorithms is slow, tedious and subjective. To address this problem, we propose a novel method in the framework of Active Labeling for construct- ing a training set of thousands of images. Inspired by the hierarchical sampling method for active learning [6], we pro- pose an Active forest that organizes hierarchically the data for easy and fast labeling. Moreover, introducing a classifier into the hierarchical structures, as well as transforming the feature space for better data clustering, additionally im- prove the algorithm. Our method is successfully tested to label 89.700 food-related objects and achieves significant reduction in expert time labelling.
主动标签在食品相关物体识别中的应用
每天,生活记录设备,可用于记录我们日常生活的不同方面,在数量,质量和功能上都在增加,就像我们赋予它们的多种应用程序一样。应用可穿戴设备来分析人们的营养习惯是一项具有挑战性的应用,因为它需要获取和分析长时间的生活记录。然而,为了提取与人们的饮食模式相关的信息,我们需要自动化的方法来处理大量的生活记录数据(例如识别与食物相关的物体)。创建一组丰富的手动标记样本来训练算法是缓慢、乏味和主观的。为了解决这个问题,我们提出了一种新的方法,在主动标记的框架下构建一个由数千张图像组成的训练集。受主动学习的分层抽样方法[6]的启发,我们提出了一种主动森林,它对数据进行分层组织,方便快速地标记。此外,在层次结构中引入分类器,并对特征空间进行变换以获得更好的数据聚类,进一步改进了算法。我们的方法成功地测试了89.700个食品相关物品的标签,显著减少了专家标签时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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