Identification of white degradable and non-degradable plastics in food field: A dynamic residual network coupled with hyperspectral technology

IF 4.3 2区 化学 Q1 SPECTROSCOPY
Xiuxin Xia , Mingyang Wang , Yan Shi, Zhifei Huang, Jingjing Liu, Hong Men, Hairui Fang
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引用次数: 2

Abstract

In the food field, with the improvement of people's health and environmental protection awareness, degradable plastics have become a trend to replace non-degradable plastics. However, their appearance is very similar, making it difficult to distinguish them. This work proposed a rapid identification method for white non-degradable and degradable plastics. Firstly, a hyperspectral imaging system was used to collect the hyperspectral images of the plastics in visible and near-infrared bands (380–1038 nm). Secondly, a residual network (ResNet) was designed according to the characteristics of hyperspectral information. Finally, a dynamic convolution module was introduced into the ResNet to establish a dynamic residual network (Dy-ResNet) to adaptively mine the data features and realize the classification of the degradable and non-degradable plastics. Dy-ResNet had better classification performance than the other classical deep learning methods. The classification accuracy of the degradable and non-degradable plastics was 99.06%. In conclusion, hyperspectral imaging technology was combined with Dy-ResNet to identify the white non-degradable and degradable plastics effectively.

Abstract Image

食品领域白色可降解和不可降解塑料的鉴别:动态残差网络与高光谱技术相结合
在食品领域,随着人们健康和环保意识的提高,可降解塑料取代不可降解塑料已成为一种趋势。然而,它们的外观非常相似,因此很难区分它们。本文提出了一种白色不可降解塑料和可降解塑料的快速鉴别方法。首先,利用高光谱成像系统采集塑料在可见光和近红外波段(380 ~ 1038 nm)的高光谱图像;其次,根据高光谱信息的特点,设计残差网络(ResNet);最后,在ResNet中引入动态卷积模块,建立动态残差网络(Dy-ResNet),自适应挖掘数据特征,实现可降解和不可降解塑料的分类。Dy-ResNet分类性能优于其他经典深度学习方法。可降解和不可降解塑料的分类准确率为99.06%。综上所述,将高光谱成像技术与Dy-ResNet相结合,可以有效识别白色不可降解塑料和可降解塑料。
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来源期刊
CiteScore
8.40
自引率
11.40%
发文量
1364
审稿时长
40 days
期刊介绍: Spectrochimica Acta, Part A: Molecular and Biomolecular Spectroscopy (SAA) is an interdisciplinary journal which spans from basic to applied aspects of optical spectroscopy in chemistry, medicine, biology, and materials science. The journal publishes original scientific papers that feature high-quality spectroscopic data and analysis. From the broad range of optical spectroscopies, the emphasis is on electronic, vibrational or rotational spectra of molecules, rather than on spectroscopy based on magnetic moments. Criteria for publication in SAA are novelty, uniqueness, and outstanding quality. Routine applications of spectroscopic techniques and computational methods are not appropriate. Topics of particular interest of Spectrochimica Acta Part A include, but are not limited to: Spectroscopy and dynamics of bioanalytical, biomedical, environmental, and atmospheric sciences, Novel experimental techniques or instrumentation for molecular spectroscopy, Novel theoretical and computational methods, Novel applications in photochemistry and photobiology, Novel interpretational approaches as well as advances in data analysis based on electronic or vibrational spectroscopy.
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