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An Improved Signal Segmentation Using Moving Average and Savitzky-Golay Filter 被引量:8
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作者 Hamed Azami Karim Mohammadi behzad bozorgtabar 《Journal of Signal and Information Processing》 2012年第1期39-44,共6页
Analysis of long-term EEG signals needs that it be segmented into pseudo stationary epochs. That work is done by regarding to statistical characteristics of a signal such as amplitude and frequency. Time series measur... Analysis of long-term EEG signals needs that it be segmented into pseudo stationary epochs. That work is done by regarding to statistical characteristics of a signal such as amplitude and frequency. Time series measured in real world is frequently non-stationary and to extract important information from the measured time series it is significant to utilize a filter or smoother as a pre-processing step. In the proposed approach, the signal is initially filtered by Moving Average (MA) or Savitzky-Golay filter to attenuate its short-term variations. Then, changes of the amplitude or frequency of the signal is calculated by Modified Varri method which is an acceptable algorithm for segmenting a signal. By using synthetic and real EEG data, the proposed methods are compared with original approach (simple Modified Varri). The simulation results indicate the absolute advantage of the proposed methods. 展开更多
关键词 NON-STATIONARY Signal Adaptive Segmentation Modified Varri MOVING AVERAGE (MA) FILTER Sa-vitzky-Golay FILTER
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Illumination Invariant Face Recognition Using Fuzzy LDA and FFNN
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作者 behzad bozorgtabar Hamed Azami Farzad Noorian 《Journal of Signal and Information Processing》 2012年第1期45-50,共6页
The most significant practical challenge for face recognition is perhaps variability in lighting intensity. In this paper, we developed a face recognition which is insensitive to large variation in illumination. Norma... The most significant practical challenge for face recognition is perhaps variability in lighting intensity. In this paper, we developed a face recognition which is insensitive to large variation in illumination. Normalization step including two steps, first we used Histogram truncation as a pre-processing step and then we implemented Homomorphic filter. The main idea is that, achieving illumination invariance causes to simplify feature extraction module and increases recognition rate. Then we utilized Fuzzy Linear Discriminant Analysis (FLDA) in feature extraction stage which showed a good discriminating ability compared to other methods while classification is performed using Feedforward Neural Network (FFNN). The experiments were performed on the ORL (Olivetti Research Laboratory) face image database and the results show the present method outweighs other techniques applied on the same database and reported in literature. 展开更多
关键词 FACE Recognition HISTOGRAM TRUNCATION Homomorphic Filter FUZZY LDA FFNN
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A Genetic Programming-PCA Hybrid Face Recognition Algorithm
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作者 behzad bozorgtabar Gholam Ali Rezai Rad 《Journal of Signal and Information Processing》 2011年第3期170-174,共5页
Increasing demand for a fast and reliable face recognition technology has obliged researchers to try and examine different pattern recognition schemes. But until now, Genetic Programming (GP), acclaimed pattern recogn... Increasing demand for a fast and reliable face recognition technology has obliged researchers to try and examine different pattern recognition schemes. But until now, Genetic Programming (GP), acclaimed pattern recognition, data mining and relation discovery methodology, has been neglected in face recognition literature. This paper tries to apply GP to face recognition. First Principal Component Analysis (PCA) is used to extract features, and then GP is used to classify image groups. To further improve the results, a leveraging method is also utilized. It is shown that although GP might not be efficient in its isolated form, a leveraged GP can offer results comparable to other Face recognition solutions. 展开更多
关键词 FACE Recognition Principal Component Analysis GENETIC PROGRAMMING Leveraging ALGORITHM
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