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Food items detection and recognition via multiple deep models

机译:通过多种深度​​模型对食品进行检测和识别

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We address the problem of food items detection and recognizing different food categories in images. Given the variety of food items with low inter- and high intraclass variations and the limited information contained in a single image, the problem is known to be particularly hard. In order to achieve better detection and recognition capabilities, we propose a joint use of multiple classifiers trained on features extracted via multiple deep models using different fusion techniques, including an early and two different late fusion schemes, namely induced order weighted averaging and particle swarm optimization based fusion. Moreover, we assess the performance of different deep models in food items detection and recognition. Experimental evaluations are carried out on two large-scale benchmark datasets, demonstrating better results for the proposed approach. (C) 2019 SPIE and IS&T
机译:我们解决了食品检测和识别图像中不同食品类别的问题。鉴于种类繁多且类别间差异较小的食品种类以及单个图像中包含的信息有限,已知该问题特别棘手。为了获得更好的检测和识别能力,我们建议联合使用对多个分类器进行训练,这些分类器使用不同的融合技术通过多个深度模型提取的特征进行训练,这些特征包括早期和两种不同的后期融合方案,即诱导阶加权平均和粒子群优化。基于融合。此外,我们评估了不同深度模型在食品检测和识别中的性能。在两个大型基准数据集上进行了实验评估,证明了所提出方法的更好结果。 (C)2019 SPIE和IS&T

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