基于颜色相似度和显著性检测模型的产品区域自动提取

Takuya Futagami, N. Hayasaka
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引用次数: 0

摘要

本文提出了一种产品区域提取方法,将产品图像的像素划分为产品区域和背景区域。该方法基于手工算法,同时使用颜色相似度和显著性检测。我们使用了180张产品图像的实验表明,与基于手工制作算法的传统方法相比,所提出的方法提高了提取精度的所有指标。作为综合指标的f指数也大幅上升了2.20%以上。我们的讨论还发现,所提出的方法也克服了传统方法的缺点,因为对于数据集的F-measure,传统方法的准确性降低,显著提高。此外,每个产品类别的f值增加了0.92%或更多。本文将进一步进行比较和讨论,以提供更有针对性的发现。
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Automatic product region extraction based on colour similarity and saliency detection models
In this paper, product region extraction, which can classify the pixels of the product images as product and background regions, is proposed. The proposed method is based on the handcrafted algorithm using both the colour similarity and the saliency detection. Our experiment, which employed 180 product images, clarified that the proposed method increased all the metric for the extraction accuracy compared with conventional methods based on the handcrafted algorithm. The F-measure, which is the comprehensive metric, was significantly increased by 2.20% or more. Our discussion also found that the proposed method also overcame the shortcoming of the conventional method, because the F-measure for the dataset, the accuracy of which was decreased by the conventional method, was significantly improved. In addition, the F-measure was increased by 0.92% or more for each product category. Further comparison and discussion are included in this paper to provide more focused findings.
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