Centre of Excellence for Advanced Sensor Technology (CEASTech), Universiti Malaysia Perlis (UniMAP), 01000, Kangar, Perlis, Malaysia.
Sensors (Basel). 2012;12(5):6023-48. doi: 10.3390/s120506023. Epub 2012 May 10.
In recent years, there have been a number of reported studies on the use of non-destructive techniques to evaluate and determine mango maturity and ripeness levels. However, most of these reported works were conducted using single-modality sensing systems, either using an electronic nose, acoustics or other non-destructive measurements. This paper presents the work on the classification of mangoes (Magnifera Indica cv. Harumanis) maturity and ripeness levels using fusion of the data of an electronic nose and an acoustic sensor. Three groups of samples each from two different harvesting times (week 7 and week 8) were evaluated by the e-nose and then followed by the acoustic sensor. Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) were able to discriminate the mango harvested at week 7 and week 8 based solely on the aroma and volatile gases released from the mangoes. However, when six different groups of different maturity and ripeness levels were combined in one classification analysis, both PCA and LDA were unable to discriminate the age difference of the Harumanis mangoes. Instead of six different groups, only four were observed using the LDA, while PCA showed only two distinct groups. By applying a low level data fusion technique on the e-nose and acoustic data, the classification for maturity and ripeness levels using LDA was improved. However, no significant improvement was observed using PCA with data fusion technique. Further work using a hybrid LDA-Competitive Learning Neural Network was performed to validate the fusion technique and classify the samples. It was found that the LDA-CLNN was also improved significantly when data fusion was applied.
近年来,已有多项关于使用非破坏性技术评估和确定芒果成熟度和成熟度水平的报道研究。然而,这些报道的大部分工作都是使用单一模式的传感系统进行的,无论是使用电子鼻、声学或其他非破坏性测量。本文介绍了使用电子鼻和声学传感器数据融合对芒果(Magnifera Indica cv. Harumanis)成熟度和成熟度水平进行分类的工作。三组来自两个不同收获时间(第 7 周和第 8 周)的样本分别由电子鼻评估,然后由声学传感器进行评估。主成分分析(PCA)和线性判别分析(LDA)能够仅根据芒果释放的香气和挥发性气体来区分第 7 周和第 8 周收获的芒果。然而,当将六个不同成熟度和成熟度水平的不同组合并到一个分类分析中时,PCA 和 LDA 都无法区分哈鲁曼尼芒果的年龄差异。LDA 仅观察到四个不同的组,而 PCA 仅显示两个不同的组。通过在电子鼻和声学数据上应用低级别的数据融合技术,使用 LDA 对成熟度和成熟度水平的分类得到了改善。然而,在使用数据融合技术时,PCA 没有观察到显著的改进。进一步使用混合 LDA-竞争学习神经网络进行工作,以验证融合技术并对样本进行分类。发现当应用数据融合时,LDA-CLNN 也得到了显著改善。