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Computers and Electronics in Agriculture, Volume 183
Volume 183, April 2021
- Youliang Ni, Chengqian Jin, Man Chen, Wensheng Yuan, Zhenjie Qian, Tengxiang Yang, Zeyu Cai:
Computational model and adjustment system of header height of soybean harvesters based on soil-machine system. 105907 - Xiang Pan, Jing Zhu, Weipeng Tai, Yan Fu:
An automated method to quantify the composition of live pigs based on computed tomography segmentation using deep neural networks. 105987 - Jianying Feng, Yuan Bianyu, Li Xin, Dong Tian, Weisong Mu:
Evaluation on risks of sustainable supply chain based on optimized BP neural networks in fresh grape industry. 105988 - Ziling Chen, Jialei Wang, Tao Wang, Zhihang Song, Yikai Li, Yuanmeng Huang, Liangju Wang, Jian Jin:
Automated in-field leaf-level hyperspectral imaging of corn plants using a Cartesian robotic platform. 105996 - Jingjun Cao, Tan Sun, Wenrong Zhang, Ming Zhong, Bo Huang, Guomin Zhou, Xiujuan Chai:
An automated zizania quality grading method based on deep classification model. 106004 - Pavel Osinenko, Konni Biegert, Roy J. McCormick, Thomas Göhrt, Grigory Devadze, Josef Streif, Stefan Streif:
Application of non-destructive sensors and big data analysis to predict physiological storage disorders and fruit firmness in 'Braeburn' apples. 106015 - Anniek Eerdekens, Margot Deruyck, Jaron Fontaine, Luc Martens, Eli De Poorter, David Plets, Wout Joseph:
A framework for energy-efficient equine activity recognition with leg accelerometers. 106020 - Sahameh Shafiee, Lars Martin Lied, Ingunn Burud, Jon Arne Dieseth, Muath Alsheikh, Morten Lillemo:
Sequential forward selection and support vector regression in comparison to LASSO regression for spring wheat yield prediction based on UAV imagery. 106036 - Pedro X. La Hera, Daniel Ortíz Morales, Omar Mendoza-Trejo:
A study case of Dynamic Motion Primitives as a motion planning method to automate the work of forestry cranes. 106037 - Jaemyung Shin, Young K. Chang, Brandon Heung, Tri Nguyen-Quang, Gordon W. Price, Ahmad Al-Mallahi:
A deep learning approach for RGB image-based powdery mildew disease detection on strawberry leaves. 106042 - Reza Arablouei, Lachlan Currie, Brano Kusy, Aaron Ingham, Paul L. Greenwood, Greg Bishop-Hurley:
In-situ classification of cattle behavior using accelerometry data. 106045 - Wenyong Li, Dujin Wang, Ming Li, Yulin Gao, Jianwei Wu, Xinting Yang:
Field detection of tiny pests from sticky trap images using deep learning in agricultural greenhouse. 106048 - Cornelia Meckbach, Verena Tiesmeyer, Imke Traulsen:
A promising approach towards precise animal weight monitoring using convolutional neural networks. 106056 - M. J. Beriain, K. Insausti, María Mercedes Valera, G. Indurain, A. Purroy, T. R. Carr, Alberto Horcada:
Effectiveness of using ultrasound readings to predict carcass traits and sensory quality in young bulls. 106060 - Zheng Fang, Mengyi Wang, Weifeng Hu, Siyuan Chen:
Potassium di-hydrogen phosphate identification based on wide energy X-ray absorption spectrum and an artificial neural network. 106062 - Keke Zhang, Qiufeng Wu, Yiping Chen:
Detecting soybean leaf disease from synthetic image using multi-feature fusion faster R-CNN. 106064 - Helizani Couto Bazame, José Paulo Molin, Daniel Althoff, Maurício Martello:
Detection, classification, and mapping of coffee fruits during harvest with computer vision. 106066 - Jianjun Yin, Zhan Zhao, Chaopeng Lei, Simon X. Yang:
Improved optical-type measurement method of grain flow using array near-infrared photoelectric sensors. 106075 - Leon Nunes, Yiannis Ampatzidis, Lucas Costa, Marcelo Wallau:
Horse foraging behavior detection using sound recognition techniques and artificial intelligence. 106080 - Yuzhen Wei, Yong He, Xiaoli Li:
Tea moisture content detection with multispectral and depth images. 106082
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