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Category identification of textile fibers based on near-infrared spectroscopy combined with data description algorithms
摘要: Cashmere is a kind of luxury ?ber produced by goats and has high economic value. The temptation of huge pro?ts makes it a common phenomenon to fake cashmere with cheap materials. There is increasing demand to develop simple methods for distinguishing cashmere with other animal ?bers. The feasibility of combining near-infrared (NIR) spectroscopy and three kind of data descriptions, i.e., support vector data description(SVDD), k-nearest neighbor data description (KNNDD) and GAUSS methods, for this goal is explored. The Relie? algorithm is used for variable selection and principal component analysis (PCA) is used as an exploratory tool and feature extraction. A total of 395 samples belonging to four categories were collected for the experiment. The number of samples used for model construction are 69, 71, 61 and 50 for A, B, C and D as the target class, respectively. Based on the selected 67 variables and only two principal components (PCs), three types of data descriptions are obtained. The SVDD model exhibits the most ?exible and tightest boundary and also achieves 100% sensitivity on the independent test set. It indicates that NIR combined with SVDD and Relie? is feasible for category identi?cation of di?erent animal ?bers.
关键词: Textile,Fiber,Near-infrared,Data description
更新于2025-09-04 15:30:14