DEEP FEATURE REPRESENTATION WITH STACKED SPARSE AUTO-ENCODER AND CONVOLUTIONAL NEURAL NETWORK FOR HYPERSPECTRAL IMAGING-BASED DETECTION OF CUCUMBER DEFECTS

被引:40
作者
Liu, Z. [1 ]
He, Y. [1 ]
Cen, H. [1 ]
Lu, R. [2 ]
机构
[1] Zhejiang Univ, Coll Biosyst Engn & Food Sci, Hangzhou, Zhejiang, Peoples R China
[2] USDA ARS, Sugarbeet & Bean Res Unit, E Lansing, MI USA
关键词
Convolutional neural network; Defect detection; Hyperspectral imaging; Pickling cucumber; Representation learning; Stacked sparse auto-encoder; CLASSIFICATION; QUALITY; SELECTION; SAFETY; INSPECTION; ALGORITHM;
D O I
10.13031/trans.12214
中图分类号
S2 [农业工程];
学科分类号
0828 ;
摘要
It is challenging to achieve rapid and accurate processing of large amounts of hyperspectral image data. This research was aimed to develop a novel classification method by employing deep feature representation with the stacked sparse auto-encoder (SSAE) and the SSAE combined with convolutional neural network (CNN-SSAE) learning for hyperspectral imaging-based defect detection of pickling cucumbers. Hyperspectral images of normal and defective pickling cucumbers were acquired using a hyperspectral imaging system running at two conveyor speeds of 85 and 165 mm s(-1). An SSAE model was developed to learn the feature representation from the preprocessed data and to perform five-class (normal, watery, split/hollow, shrivel, and surface defect) classification. To deal with a more complicated task for different types of surface defects (i.e., dirt/sand and gouge/rot classes) in six-class classification, a CNN-SSAE system was developed. The results showed that the CNN-SSAE system improved the classification performance, compared with the SSAE, with overall accuracies of 91.1% and 88.3% for six-class classification at the two conveyor speeds. Additionally, the average running time of the CNN-SSAE system for each sample was less than 14 ms, showing considerable potential for application in an automated on-line inspection system for cucumber sorting and grading.
引用
收藏
页码:425 / 436
页数:12
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