scholarly journals Deep Belief Network Approach for Recognition of Cow using Cow Nose Image Pattern

Author(s):  
Rotimi-Williams BELLO ◽  
Abdullah Zawawi Hj TALIB ◽  
Ahmad Sufril Azlan Bin MOHAMED

A deep belief network is proposed to learn the discriminatory cow nose image texture features for a robust representation of cows' features and recognition using a cow nose image pattern. Deep belief network is a deep learning model that is graphically based, and it is applied to learn the extracted feature sets of cow nose image pattern for hierarchical representation by using the training details of the training phase of the system proposed. Deep belief network application is useful in animal biometrics to monitor the animals through its recognition and identification techniques. Biometrics application emanated from computer vision and pattern recognition. Its application plays an important role in registering and monitoring animals through its recognition and identification techniques. Because the existing physical-based feature representation methods and manual visual feature extractions cannot handle animal recognition, the deep belief network technique is proposed using the animal's visual attributes. An experiment performed under a controlled condition of identification indicated that the proposed method outshines the existing methods with approximately 98.99 % accuracy. Four thousand cow nose images from an existing database of 400 individual cows contribute to the community of research, especially in the animal biometrics for identification of individual cow.

2018 ◽  
Vol 173 ◽  
pp. 03090
Author(s):  
WANG Ying-chen ◽  
DUAN Xiu-sheng

Aiming at the problem that the traditional intelligent fault diagnosis method is overly dependent on feature extraction and the lack of generalization ability, deep belief network is proposed for the fault diagnosis of the analog circuit; Then, by analyzing the deficiency of deep belief network application, a Gaussian deep belief network based on adaptive learning rate is proposed. The automatic adjustment learning step is adopted to further improve fault diagnosis efficiency and diagnosis accuracy; Finally, particle swarm support vector machine to extract the fault characteristics to identify. The simulation results of circuit fault diagnosis show that the algorithm has faster convergence speed and higher fault diagnosis accuracy.


2019 ◽  
Vol 28 (5) ◽  
pp. 925-932
Author(s):  
Hua WEI ◽  
Chun SHAN ◽  
Changzhen HU ◽  
Yu ZHANG ◽  
Xiao YU

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