Back to Search Start Over

Pig Breeds Classification using Neuro-Statistic Model

Authors :
Kaushik Mukherjee
Sanket Dan
Subhranil Mustafi
Dilip Kumar Hajra
Satyendra Nath Mandal
Santanu Banik
Kunal Roy
Pritam Ghosh
Source :
Science & Technology Journal. 7:78-88
Publication Year :
2019
Publisher :
Mizoram University, 2019.

Abstract

Image classification using fully connected neural network is not efficient due to huge number of parameters in each layer. In this paper, we propose a Neuro-Statistic model for classification of five different pig breeds from pig images. The model consists of four sub modules which work together as a layered structure. We captured multiple individual pig images of five different pig breeds from different organized farms to conduct this research, segmented the captured pig images using hue based segmentation algorithm and then calculated the statistical properties like entropy, standard deviation, variance, mean, median, mode and color properties like H.S.V from the content of the individual segmented images. We fed all the extracted properties into Neural Network for Pig Breed (NNPB) to perform pig breed prediction with the classification module and analyzed the best performance, regression error plot, Error histogram and training state of NNPB. The performance of NNPB network was accepted based on error analysis and finally, we used the trained model to predict the breed of 50 pig images and achieved the prediction accuracy of 90%.

Details

ISSN :
23213388
Volume :
7
Database :
OpenAIRE
Journal :
Science & Technology Journal
Accession number :
edsair.doi...........91708af6c141a3c4061084bfbb0cd200