Mohsen Bahrami

Work place: Amirkabir University of Technology/Department of Mechanical Engineering, Tehran, 158754413, Iran

E-mail: mbahrami@aut.ac.ir

Website:

Research Interests: Engineering, Computational Engineering, Computational Science and Engineering

Biography

Mohsen Bahrami holds a PhD of mechanical engineering from Oregon state university. Professor Mohsen Bahrami is a fuculty member and Robotic Laboratory head in mechanical engineering department, Amirkabir University of Technology. His areas of expertise are robot dynamics and control application, flight dynamics and control, satellite dynamics and control.

Author Articles
Intelligent Geometric Classification of Irregular Patterns via Probabilistic Neural Network

By Sogand Hoshyarmanesh Mohammadreza Fathikazerooni Mohsen Bahrami

DOI: https://doi.org/10.5815/ijigsp.2015.04.02, Pub. Date: 8 Mar. 2015

This paper deals with interpretation of patterns via neural networks under organization and classification approaches. Fifty different groups of images including geometric shapes, mechanical instruments, machines, animals, fruits, and other classes of samples are classified here in two successive steps. Each primary category is divided into three different sub-groups. The purpose is identifying the class and sub-class of each input sample. Nowadays, industry and manufacturing are moving towards automation; hence accurate description of photos results in a myriad of industrial, security, and medical applications and takes a pressing part in artificial intelligence's progression. Intelligent interpretation of structure's design in CNC machine eventuates in autonomous selection of cutting tools by which any structure can easily be manufactured. Anyhow, this paper comes up with a pattern interpretation method to be applied in submarine detection purposes. Remotely operated vehicles (ROV) are used to detect and survey oil pipelines and underwater marine structures, so mentioned neural network classification is a practicable tool for detection mechanism and avoiding obstacles in ROVs.

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