木制品构件颜色空间自适应量化识别

A. L. Abbott, Yuedong Zhao
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引用次数: 3

摘要

本文研究了利用彩色图像识别纹理物体,如染色木制品。许多现有的颜色分类系统利用基于直方图的相似性度量来比较观察到的图像与数据库中的模型。尽管这些系统的性能在很大程度上取决于颜色空间的适当量化,但大多数量化方法都是基于传统的聚类或阈值操作。作者描述了一种新的颜色空间量化方法,其中有意义表示的交集导致颜色空间的划分。使用一组训练图像自适应地选择颜色描述。所得的分割作为模型直方图和观察图像的域,并使用信息论的相似性度量来执行识别。该系统的动机是在工业环境中实现较高的识别精度。实验室测试已经证明了这种技术的高度准确性,即使感兴趣的物体表现出很大的纹理和颜色变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive quantization of color space for recognition of finished wooden components
The paper concerns the recognition of textured objects, such as stained wooden parts, using color images. Many existing color classification systems utilize histogram-based similarity measures to compare an observed image with models from a database. Although the performance of these systems depends heavily on proper quantization of the color space, most quantization methods are based on traditional clustering or thresholding operations. The authors describe a novel approach to color space quantization in which the intersection of meaningful representations results in a partition of the color space. The color descriptions are chosen adaptively, using a set of training images. The resulting partition serves as the domain for histograms of models and of observed images and information-theoretic similarity measures are used to perform recognition. The motivation for this system is to achieve high recognition accuracy in an industrial setting. Laboratory tests have demonstrated a high level of accuracy for this technique, even though the objects of interest exhibit large variations of texture and color.
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