Neural Network Model with Broadband Prior Knowledge Neurons for Microstrip T-junction Structure

Author(s):  
Jing-song Hong ◽  
Bing-zhong Wang ◽  
Sheng-jian Lai ◽  
Bi-neng Zeng
2017 ◽  
Vol 58 ◽  
pp. 297-306 ◽  
Author(s):  
Subhamita Chakraborty ◽  
Partha P. Chattopadhyay ◽  
Swarup K. Ghosh ◽  
Shubhabrata Datta

2021 ◽  
Vol 2021 ◽  
pp. 1-8
Author(s):  
Rui Liu ◽  
Ziqi Liu ◽  
Shuyong Liu

In the field of basketball, the formulation of the existing training plan mainly relies on the coaches’ artificial observation and personal experience, which is inevitably subjective. The application of body domain network technology in athletes’ training and recognition of athletes’ postures can help coaches to assist decision-making and greatly improve athletes’ competitive ability. The human movements reflected in basketball are more complex which need deep understanding. The accuracy of basketball players’ shooting movements recognition plays a positive and important role in basketball games and training practice. Based on the prior knowledge of the convolutional neural network study, environment light conditions change the dynamic characteristics of basketball image analysis, capture images of the basketball goal algorithm of minimum circumscribed rectangle of the object, and based on the convolutional neural network, introduce two types of prior knowledge, one kind is based on the feature matching method that defined a priori knowledge, while another kind is based on training the convolution neural network model. The test results of the network model are taken as the prior knowledge, and then, a convolutional neural network dynamic target recognition model is constructed based on the prior knowledge. The construction process of the model is organized as the basketball target image is collected under any illumination conditions, the convolutional neural network model is trained with the convolutional neural network as the input data, and the standard illumination conditions are determined according to the test results of the network model. Then, put it into the trained network model to test and get the recognition results of basketball players’ shooting movements. The research is validated with performing experiments and the results revealed the success of the study.


Symmetry ◽  
2021 ◽  
Vol 13 (8) ◽  
pp. 1458
Author(s):  
Jinling Xu ◽  
Yanping Chen ◽  
Yongbin Qin ◽  
Ruizhang Huang ◽  
Qinghua Zheng

The task to extract relations tries to identify relationships between two named entities in a sentence. Because a sentence usually contains several named entities, capturing structural information of a sentence is important to support this task. Currently, graph neural networks are widely implemented to support relation extraction, in which dependency trees are employed to generate adjacent matrices for encoding structural information of a sentence. Because parsing a sentence is error-prone, it influences the performance of a graph neural network. On the other hand, a sentence is structuralized by several named entities, which precisely segment a sentence into several parts. Different features can be combined by prior knowledge and experience, which are effective to initialize a symmetric adjacent matrix for a graph neural network. Based on this phenomenon, we proposed a feature combination-based graph convolutional neural network model (FC-GCN). It has the advantages of encoding structural information of a sentence, considering prior knowledge, and avoiding errors caused by parsing. In the experiments, the results show significant improvement, which outperform existing state-of-the-art performances.


Sign in / Sign up

Export Citation Format

Share Document