Object recognition and detection by shape and color pattern recognition utilizing artificial neural networks
College
Gokongwei College of Engineering
Department/Unit
Electronics And Communications Engg
Document Type
Conference Proceeding
Source Title
2013 International Conference of Information and Communication Technology, ICoICT 2013
First Page
140
Last Page
144
Publication Date
9-10-2013
Abstract
A robust and accurate object recognition tool is presented in this paper. The paper introduced the use of Artificial Neural Networks in evaluating a frame shot of the target image. The system utilizes three major steps in object recognition, namely image processing, ANN processing and interpretation. In image processing stage a frame shot or an image go through a process of extracting numerical values of object's shape and object's color. These values are then fed to the Artificial Neural Network stage, wherein the recognition of the object is done. Since the output of the ANN stage is in numerical form the third process is indispensable for human understanding. This stage simply converts a given value to its equivalent linguistic term. All three components are integrated in an interface for ease of use. Upon the conclusion of the system's development, experimentation and testing procedures are initiated. The study proved that the optimum lighting condition opted for the system is at 674 lumens with an accuracy of 99.99996072%. Another finding that the paper presented is that the optimum distance for recognition is at 40cm with an accuracy of 99.99996072%. Lastly the system contains a very high tolerance in the variations in the objects position or orientation, with the optimum accuracy at upward position with 99.99940181% accuracy rate. © 2013 IEEE.
html
Digitial Object Identifier (DOI)
10.1109/ICoICT.2013.6574562
Recommended Citation
Cruz, J. N., Dimaala, M., Francisco, L. L., Franco, E. S., Bandala, A. A., & Dadios, E. P. (2013). Object recognition and detection by shape and color pattern recognition utilizing artificial neural networks. 2013 International Conference of Information and Communication Technology, ICoICT 2013, 140-144. https://doi.org/10.1109/ICoICT.2013.6574562
Disciplines
Electrical and Computer Engineering
Keywords
Neural networks (Computer science); Pattern recognition systems
Upload File
wf_yes