scholarly journals Exploiting Hierarchical Features for Crop Yield Prediction based on 3D Convolutional Neural Networks and Multi-kernel Gaussian Process

Author(s):  
Mengjia Qiao ◽  
Xiaohui He ◽  
Xijie Cheng ◽  
Panle Li ◽  
Haotian Luo ◽  
...  
2021 ◽  
Author(s):  
Amit Kumar Srivast ◽  
Nima Safaei ◽  
Saeed Khaki ◽  
Gina Lopez ◽  
Wenzhi Zeng ◽  
...  

Abstract Crop yield forecasting depends on many interactive factors including crop genotype, weather, soil, and management practices. This study analyzes the performance of machine learning and deep learning methods for winter wheat yield prediction using extensive datasets of weather, soil, and crop phenology. We propose a convolutional neural network (CNN) which uses the 1-dimentional convolution operation to capture the time dependencies of environmental variables. The proposed CNN, evaluated along with other machine learning models for winter wheat yield prediction in Germany, outperformed all other models tested. To address the seasonality, weekly features were used that explicitly take soil moisture and meteorological events into account. Our results indicated that nonlinear models such as deep learning models and XGboost are more effective in finding the functional relationship between the crop yield and input data compared to linear models and deep neural networks had a higher prediction accuracy than XGboost. One of the main limitations of machine learning models is their black box property. Therefore, we moved beyond prediction and performed feature selection, as it provides key results towards explaining yield prediction (variable importance by time). As such, our study indicates which variables have the most significant effect on winter wheat yield.


Author(s):  
Divya Banesh ◽  
Nishant Panda ◽  
Ayan Biswas ◽  
Luke Van Roekel ◽  
Diane Oyen ◽  
...  

Efficient and effective mango fruit recognition is viewed as significant for development of a smart agriculture robot (ARo) for yield prediction, pest control, sorting and fruit detection. Several fruit recognition techniques for structuring ARo have been employed during the most recent decades. Recently, ordinary natural fruit identification techniques are lacking progressive response, exactness and extensibility. In this paper, we proposed an improved algorithm of MTCNN (Multi-Task Cascaded Convolutional Network) based on IFD (Intelligence Fruit Detection) technique. This technique has the ability to make the ARo work progressively with high precision. Additionally, in view of the connection between the number of tests on dataset and the boundaries of Neural Networks advancement, this work presents an improved strategy. A method that depends on image clustering is used to improve the identification in this project. The experimental results exhibited that the proposed identification performed significantly, both as far as exactness and time-cost. Besides, the broad trials exhibited that the proposed strategy has the limit and a decent compactness to work with other associated systems.


2019 ◽  
pp. 1411-1424
Author(s):  
Jian-min Liu ◽  
Min-hua Yang

This article describes hierarchical features with unsupervised learning on images from internet street view images. This is due to the time spent by trained researchers on feature construction steps with traditional methods. This article focuses on the activation of each layer of with convolutional neural networks (CNNs) on Internet street view images detection and compared similarities and differences among them on each layer. The experiment results achieved error rates of 21% on recognition which work went relatively well than the traditional machine learning techniques, such as Parallel SVM.


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