Detection of Pear Quality Using Hyperspectral Imaging Technology and Machine Learning Analysis
文献类型: 外文期刊
第一作者: Zhang, Zishen
作者: Zhang, Zishen;Geng, Wenjuan;Zhang, Zishen;Cheng, Hong;Chen, Meiyu;Zhang, Lixin;Cheng, Yudou;Guan, Junfeng;Zhang, Zishen;Cheng, Hong;Chen, Meiyu;Zhang, Lixin;Cheng, Yudou;Guan, Junfeng;Chen, Meiyu
作者机构:
关键词: hyperspectral imaging; pear; non-destructive detection; machine learning model; prediction model
期刊名称:FOODS ( 影响因子:5.1; 五年影响因子:5.6 )
ISSN:
年卷期: 2024 年 13 卷 23 期
页码:
收录情况: SCI
摘要: The non-destructive detection of fruit quality is indispensable in the agricultural and food industries. This study aimed to explore the application of hyperspectral imaging (HSI) technology, combined with machine learning, for a quality assessment of pears, so as to provide an efficient technical method. Six varieties of pears were used for inspection, including 'Sucui No.1', 'Zaojinxiang', 'Huangguan', 'Akizuki', 'Yali', and 'Hongli No.1'. Spectral data within the 398 similar to 1004 nm wavelength range were analyzed to compare the predictive performance of the Least Squares Support Vector Machine (LS-SVM) models on various quality parameters, using different preprocessing methods and the selected feature wavelengths. The results indicated that the combination of Fast Detrend-Standard Normal Variate (FD-SNV) preprocessing and Competitive Adaptive Reweighted Sampling (CARS)-selected feature wavelengths yielded the best improvement in model predictive ability for forecasting key quality parameters such as firmness, soluble solids content (SSC), pH, color, and maturity degree. They could enhance the predictive capability and reduce computational complexity. Furthermore, in order to construct a quality prediction model, integrating hyperspectral data from six pear varieties resulted in an RPD (Ratio of Performance to Deviation) exceeding 2.0 for all the quality parameters, indicating that increasing the fruit sample size and variety number further strengthened the robustness of the model. The Backpropagation Neural Network (BPNN) model could accurately distinguish six distinct pear varieties, achieving prediction accuracies of above 99% for both the calibration and test sets. In summary, the combination of HSI and machine learning models enabled an efficient, rapid, and non-destructive detection of pear quality and provided a practical value for quality control and the commercial processing of pears.
分类号:
- 相关文献
作者其他论文 更多>>
-
LOGOWheat: deep learning-based prediction of regulatory effects for noncoding variants in wheats
作者:Kong, Lingpeng;Cheng, Hong;Zhu, Kun;Song, Bo;Zhu, Kun
关键词:deep learning; self-attention; noncoding variants; variant score
-
Characterization of Thirty Germplasms of Millet Pepper (Capsicum frutescens L.) in Terms of Fruit Morphology, Capsaicinoids, and Nutritional Components
作者:Zhang, Ruihao;Li, Mengjuan;Lv, Junheng;Li, Pingping;Mo, Yunrong;Zhang, Xiang;Cheng, Hong;Deng, Qiaoling;Deng, Minghua;Zhang, Ruihao;Gui, Min
关键词:millet pepper; morphological traits; nutritional components; genetic diversity; comprehensive evaluation
-
Molecular dissection of hemizygote-dependent dominance of super-early flowering in soybean
作者:Xu, Xin;Yu, Yang;Jiang, Bingjun;Cao, Dong;Zhang, Lixin;Jia, Hongchang;Sun, Xuegang;Chen, Li;Yuan, Shan;Chen, Fulu;Lu, Zefu;Liu, Yanhong;Naser, Mahmoud;Wu, Tingting;Wu, Cunxiang;Sun, Shi;Han, Tianfu;Yu, Yang;Cao, Dong;Zhang, Qingzhu;Han, Tianfu
关键词:Soybean; Hemizygote-dependent dominance; Flowering time; siRNA; DNA methylation
-
Genetic basis and origin of coat color in Leiqiong cattle
作者:Luo, Fu-Nong;Chen, Shu-Jun;Nanaei, Hojjat Asadollahpour;Wang, Xin-Yu;Li, Jie;Jiang, Yu;Luo, Fu-Nong;Chen, Shu-Jun;Wang, Xin-Yu;Li, Jie;Jiang, Yu;Nanaei, Hojjat Asadollahpour;Heller, Rasmus;Hu, De-Xiang;Cheng, Hong;Ni, Shi-Heng;Li, Mao;Dai, Xue-Lei
关键词:Genome-wide association studies; Indicine cattle; CORIN gene; Haplotype diversity; Introgression
-
Nondestructive evaluation of yellowing and senescence in 'Yali' pear using integrated hyperspectral and chlorophyll fluorescence imaging
作者:Cheng, Hong;Zhang, Zishen;Feng, Yunxiao;He, Jingang;Wang, Jinxiao;Cheng, Yudou;Guan, Junfeng;Cheng, Hong;Zhang, Zishen;Feng, Yunxiao;He, Jingang;Wang, Jinxiao;Cheng, Yudou;Guan, Junfeng;Zhang, Zishen
关键词:Chlorophyll fluorescence imaging; Hyperspectral imaging; Chlorophyll fluorescence parameters; Yellowing and senescence; Non-destructive determination; 'Yali' pear
-
Response of Watermelon to Drought Stress and Its Drought-Resistance Evaluation
作者:Ren, Kaili;Tang, Taoxia;Kong, Weiping;Su, Yongquan;Cheng, Hong;Yang, Yonggang;Zhao, Xiaoqin;Ren, Kaili;Wang, Yuping
关键词:watermelon; drought stress; drought resistance; comprehensive evaluation
-
Regulation of Pear Fruit Quality: A Review Based on Chinese Pear Varieties
作者:Zhang, Ying;Cheng, Yudou;Guan, Junfeng;Ma, Yuru;Zhang, Hao
关键词:fruit; quality; pear; stone cells; sugar content