Inicio  /  Agriculture  /  Vol: 13 Par: 4 (2023)  /  Artículo
ARTÍCULO
TITULO

Classification of Codling Moth-Infested Apples Using Sensor Data Fusion of Acoustic and Hyperspectral Features Coupled with Machine Learning

Nader Ekramirad    
Alfadhl Y. Khaled    
Kevin D. Donohue    
Raul T. Villanueva and Akinbode A. Adedeji    

Resumen

Codling moth (CM) is a major apple pest. Current manual method of detection is not very effective. The development of nondestructive monitoring and detection methods has the potential to reduce postharvest losses from CM infestation. Previous work from our group demonstrated the effectiveness of hyperspectral imaging (HSI) and acoustic methods as suitable techniques for nondestructive CM infestation detection and classification in apples. However, both have limitations that can be addressed by the strengths of the other. For example, acoustic methods are incapable of detecting external CM symptoms but can determine internal pest activities and morphological damage, whereas HSI is only capable of detecting the changes and damage to apple surfaces and up to a few mm inward; it cannot detect live CM activity in apples. This study investigated the possibility of sensor data fusion from HSI and acoustic signals to improve the detection of CM infestation in apples. The time and frequency domain acoustic features were combined with the spectral features obtained from the HSI, and various classification models were applied. The results showed that sensor data fusion using selected combined features (mid-level) from the sensor data and three apple varieties gave a high classification rate in terms of performance and reduced the model complexity with an accuracy up to 94% using the AdaBoost classifier, when only six acoustic and six HSI features were applied. This result affirms that the sensor fusion technique can improve CM infestation detection in pome fruits such as apples.

 Artículos similares

       
 
Xiuying Xu, Yingying Gao, Changhao Fu, Jinkai Qiu and Wei Zhang    
The cover of corn stover has a significant effect on the emergence and growth of soybean seedlings. Detecting corn stover covers is crucial for assessing the extent of no-till farming and determining subsidies for stover return; however, challenges such ... ver más
Revista: Agriculture

 
Enrico Santangelo, Angelo Del Giudice, Simone Figorilli, Simona Violino, Corrado Costa, Marco Bascietto, Simone Bergonzoli and Claudio Beni    
The autonecrotic tomato line V20368 (working code IGSV) spontaneously develops necrotic lesions with acropetal progression in response to an increase in temperature and light irradiation. The process is associated with the interaction between tomato and ... ver más
Revista: Agriculture

 
Xiuying Xu, Changhao Fu, Yingying Gao, Ye Kang and Wei Zhang    
The origin of seeds is a crucial environmental factor that significantly impacts crop production. Accurate identification of seed origin holds immense importance for ensuring traceability in the seed industry. Currently, traditional methods used for iden... ver más
Revista: Agriculture

 
Xiyu Tan, Guixiang Peng, Sajid Muhammad, Sidra Kaleem, Mehmood Jan, Raheel Munir, Xiaoyuan Chen, Arif Ali Khattak, Abid Ali Abbas, Yihang Chen, Xiaolin Wang, Muhammad Afzal and Zhiyuan Tan    
Tandemly organized rRNA genes are a typical example of a multigene family, where individual members evolve co-ordinately within?but independently between?species due to gene conversion and unequal crossing over. More frequently, in eukaryotic species wit... ver más
Revista: Agriculture

 
Mengjun Ku, Hao Jiang, Kai Jia, Xuemei Dai, Jianhui Xu, Dan Li, Chongyang Wang and Boxiong Qin    
South China is dominated by mountainous agriculture and croplands that are at risk of flood disasters, posing a great threat to food security. Synthetic aperture radar (SAR) has the advantage of being all-weather, with the ability to penetrate clouds and... ver más
Revista: Agronomy