基于熵的织物织型准确索引与分类

Dejun Zheng, G. Baciu, Jinlian Hu
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引用次数: 9

摘要

在当前的纺织品设计中,织物的织型索引和检索需要大量的人工操作。手工织型分类不仅不能给出准确、精确的结果,而且耗时长。目前还没有专门对织型进行索引和检索的研究。本文提出了一种编织图案索引和检索方法。我们将模式聚类、过渡、熵和快速傅里叶变换(FFT)的方向性作为一种混合方法来进行编织模式的认知比较和分类。在纺织品设计中有三种常用的图案。它们有平纹、斜纹和缎纹。首先,根据织型定义和织点分布特征(织型平滑性和连通性)将织型分为三类。其次,利用FFT对织点分布进行描述。最后利用熵值法将织点分布计算为一个显著指标值。我们的方法可以避免数据库中模式重复的问题。在我们的实验中,我们用我们提出的方法选择和测试常用的编织图案。实验结果表明,我们的方法可以实现相当准确的分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate indexing and classification for fabric weave patterns using entropy-based approach
In current textile design, fabric weave pattern indexing and searching require extensive manual operations. The manual weave pattern classification is not sufficient to give the accurate and precise result and it is time-consuming. There is no such research to index and search for weave pattern specially. In this paper we propose a method to index and search weave patterns. We use pattern clusters, transitions, entropy and Fast Fourier Transform (FFT) directionality as a hybrid approach for the cognitive comparison and classification of weave pattern. There are three common patterns used in textile design. They are plain weave, twill weave and satin weave patterns. First, we classify weave patterns into these three categories according to weave pattern definition and weave point distribution characteristics (weave pattern smoothness and connectivity). Second, we use the FFT to describe the weave point distribution. Finally, we use entropy method to calculate the weave point distribution into a significant index value. Our approach can avoid the problem of pattern duplications in the database. In our experiment, we select and test commonly used weave patterns with our proposed approach. Our experiment results show that our approach can achieve substantially accurate classification.
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