The limitation of surveillance camera (CCTV) is related to the low resolution of the camera. In face detection, low resolution will affect the recognition rates and performance of the algorithm in terms of time response and its accuracy. This report leads to an Analysis of Frontal Face Detection by using Artificial Neural Network (ANN) and Speeded-Up Robust Feature (SURF) technique. The implementation of frontal face detection by using two varied techniques of image processing of Neural Network and SURF technique will be explored by using MATLAB software. Both techniques generate contrast of image performance in terms of time response and its accuracy. The expected output is to generate frontal face detection and to compare the performance of the image between the techniques selected. The comparison of performance in terms of time response, SURF is much better than ANN. This can be seen clearly by varying the resolution of the image. SURF keeps the fast record in identify the key feature in the image. In ...
[1]
B. Yegnanarayana,et al.
Artificial Neural Networks
,
2004
.
[2]
Yasir Mohd Mustafah,et al.
Performance Comparison between ANN and PCA Techniques for Road Signs Recognition
,
2013
.
[3]
Mohd Safirin Karis,et al.
Hidden nodes of neural network: Useful application in traffic sign recognition
,
2014,
2014 IEEE International Conference on Smart Instrumentation, Measurement and Applications (ICSIMA).
[4]
Mohsen Hayati,et al.
Artificial Neural Network Approach for Short Term Load Forecasting for Illam Region
,
2007
.
[5]
Shalini Batra,et al.
Image Retrieval using SURF Features
,
2011
.