@article{Abdullah_Abd Rashid_Othman_Ismail Khan_Musirin_2017, title={Ground Vehicles Classification using Multi Perspective Features in FSR Micro-Sensor Network}, volume={9}, url={https://jtec.utem.edu.my/jtec/article/view/1833}, abstractNote={Automatic target classification (ATC) is examined from the viewpoint of improving classification accuracy. The challenge of automatic target classification is the selection of feature extraction (FE) technique, types of features and the type of classifier use. In this paper, the combination of Z-score and neural network (NN) is applied in order to perform the classification process for a ground target. The Z-score is used as a feature extractor where it will extract the significant data contain in the target’s signal and NN acts as a classifier to classify the targets based on their size. Different types of features are used in order to optimize the system performance. Results obtained demonstrate the improvement of classification performance when high number of features in the classification is used.}, number={1-5}, journal={Journal of Telecommunication, Electronic and Computer Engineering (JTEC)}, author={Abdullah, Nur Fadhilah and Abd Rashid, Nur Emileen and Othman, Kama Azura and Ismail Khan, Zuhani and Musirin, Ismail}, year={2017}, month={Apr.}, pages={49–52} }