纺织纤维识别的图像信号相关网络

Bo Peng, Liren He, Yining Qiu, Dong Wu, M. Chi
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引用次数: 2

摘要

鉴别纤维成分是纺织工业的一个重要方面。近几十年来,近红外光谱在光纤成分的自动检测方面显示出了它的潜力。然而,对于植物纤维,如棉花和亚麻,化学成分相同,因此吸收光谱非常相似,导致了“不同材料具有相同的光谱,而相同材料具有不同的光谱”的问题,并且很难使用单一模式的近红外信号捕捉到区分这些纤维的有效特征。为了解决这一问题,纺织专家在显微镜下测量纤维的横截面或纵向特性,用破坏性的方法测定纤维含量。本文构建了首个近红外信号显微镜图像纺织纤维成分数据集(NIRITFC)。基于NIRITFC数据集,提出图像-信号相关网络(ISiC-Net),设计图像-信号相关感知模块和图像-信号相关关注模块,将视觉特征(特别是纤维局部纹理细节)与近红外信号更精细的吸收光谱信息有效融合,捕捉双峰数据的深层抽象特征,用于纺织品纤维无损识别。为了更好地了解光纤组分的光谱特性,通过嵌入编码生成相应光纤的端元向量,设计重构损失,引导模型通过非线性映射重构相应光纤组分的近红外信号。与单峰和双峰方法相比,该方法的定量和定性结果都有显著提高,表明显微图像和近红外信号相结合在纺织纤维成分识别中的巨大潜力。
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Image-Signal Correlation Network for Textile Fiber Identification
Identifying fiber compositions is an important aspect of the textile industry. In recent decades, near-infrared spectroscopy has shown its potential in the automatic detection of fiber components. However, for plant fibers such as cotton and linen, the chemical compositions are the same and thus the absorption spectra are very similar, leading to the problem of "different materials with the same spectrum, whereas the same material with different spectrums" and it is difficult using a single mode of NIR signals to capture the effective features to distinguish these fibers. To solve this problem, textile experts under a microscope measure the cross-sectional or longitudinal characteristics of fibers to determine fiber contents with a destructive way. In this paper, we construct the first NIR signal-microscope image textile fiber composition dataset (NIRITFC). Based on the NIRITFC dataset, we propose an image-signal correlation network (ISiC-Net) and design image-signal correlation perception and image-signal correlation attention modules, respectively, to effectively integrate the visual features (esp. local texture details of fibers) with the finer absorption spectrum information of the NIR signal to capture the deep abstract features of bimodal data for nondestructive textile fiber identification. To better learn the spectral characteristics of the fiber components, the endmember vectors of the corresponding fibers are generated by embedding encoding, and the reconstruction loss is designed to guide the model to reconstruct the NIR signals of the corresponding fiber components by a nonlinear mapping. The quantitative and qualitative results are significantly improved compared to both single and bimodal approaches, indicating the great potential of combining microscopic images and NIR signals for textile fiber composition identification.
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