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【期刊论文】Improving Automatic Detection of Defects in Castings by Applying Wavelet Technique
李小俚, Xiaoli Li, S. K. Tso, Senior Member, IEEE, Xin-Ping Guan, Qian Huang
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, VOL. 53, NO. 6, DECEMBER 2006,-0001,():
-1年11月30日
X-ray-based inspection systems are a well-accepted technique for identification and evaluation of internal defects in castings, such as cracks, porosities, and foreign inclusions. In this paper, some images showing typical internal defects in the castings derived from an X-ray inspection system are processed by some traditional methods and wavelet technique in order to facilitate automatic detection of these internal defects. An X-ray inspection system used to detect the internal defects of castings and the typical internal casting defects is first addressed. Second, the second-order derivative and morphology operations, the row-by-row adaptive thresholding, and the two-dimensional (2-D) wavelet transform methods are described as potentially useful processing techniques. The first method can effectively detect air-holes and foreign-inclusion defects, and the second one can be suitable for detecting shrinkage cavities. Wavelet techniques, however, can effectively detect the three typical defects with a selected wavelet base and multiresolution levels. Results indicate that 2-D wavelet transform is a powerful method to analyze images derived from X-ray inspection for automatically detecting typical internal defects in the casting.
Castings,, defects,, image processing,, wavelet transform,, X-ray inspection.,
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【期刊论文】Predictability analysis of absence seizures with permutation entropy
李小俚, Xiaoli Li, , Gaoxian Ouyang, Douglas A. Richards
Epilepsy Research (2007) 77, 70-74,-0001,():
-1年11月30日
In this study, we investigate permutation entropy as a tool to predict the absence seizures of genetic absence epilepsy rats from Strasbourg (GAERS) by using EEG recordings. The results show that permutation entropy can track the dynamical changes of EEG data, so as to describe transient dynamics prior to the absence seizures. Experiments demonstrate that permutation entropy can successfully detect pre-seizure state in 169 out of 314 seizures from 28 rats and the average anticipation time of permutation entropy is around 4.9 s. These findings could shed new light on the mechanism of absence seizure. In comparison with results of sample entropy, permutation entropy is better able to predict absence seizures.
Absence seizure, Predictions, Permutation entropy, Sample entropy, Genetic absence epilepsy rats
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【期刊论文】Measure of the electroencephalographic effects of sevoflurane using recurrence dynamics
李小俚, Xiaoli Li , , Jamie W. Sleigh, Logan J. Voss, Gaoxiang Ouyang
Neuroscience Letters 424 (2007) 47-50,-0001,():
-1年11月30日
This paper proposes a novel method to interpret the effect of anesthetic agents (sevoflurane) on the neural activity, by using recurrence quantification analysis of EEG data. First, we reduce the artefacts in the scalp EEG using a novel filter that combines wavelet transforms and empirical mode decomposition. Then, the determinism in the recurrence plot is calculated. It is found that the determinism increases gradually with increasing the concentration of sevoflurane. Finally, a pharmacokinetic and pharmacodynamic (PKPD) model is built to describe the relationship between the concentration of sevoflurane and the processed EEG measure (‘determinism’ of the recurrence plot). A test sample of nine patients shows the recurrence in EEG data may track the effect of the sevoflurane on the brain. Crown Copyright
EEG, Anesthesia, Sevoflurane, Recurrence quantification analysis, Artefact reduction, Pharmacokinetic and pharmacodynamic model
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【期刊论文】Information flow among neural networks with Bayesian estimation
李小俚, LI Yan, LI XiaoLi, OUYANG GaoXiang, GUAN XinPing
Chinese Science Bulletin July 2007, Vol. 52, No. 14, 2006-2011,-0001,():
-1年11月30日
Estimating the interaction among neural networks is an interesting issue in neuroscience. Some methods have been proposed to estimate the coupling strength among neural networks; however, few estimations of the coupling direction (information flow) among neural networks have been attempted. It is known that Bayesian estimator is based on a priori knowledge and a probability of event occurrence. In this paper, a new method is proposed to estimate coupling directions among neural networks with conditional mutual information that is estimated by Bayesian estimation. First, this method is applied to analyze the simulated EEG series generated by a nonlinear lumped-parameter model. In comparison with the conditional mutual information with Shannon entropy, it is found that this method is more successful in estimating the coupling direction, and is insensitive to the length of EEG series. Therefore, this method is suitable to analyze a short time series in practice. Second, we demonstrate how this method can be applied to the analysis of human intracranial epileptic electroencephalogram (EEG) recordings, and to indicate the coupling directions among neural networks. Therefore, this method helps to elucidate the epileptic focus localization.
phase synchronization, coupling direction, conditional mutual information, Bayesian estimation, epileptic EEG
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【期刊论文】Awavelet-based data pre-processing analysis approach in mass spectrometry
李小俚, Xiaoli Li, Jin Li, XinYao
Computers in Biology and Medicine 37 (2007) 509-516,-0001,():
-1年11月30日
Recently, mass spectrometry analysis has a become an effective and rapid approach in detecting early-stage cancer. To identify proteomic patterns in serum to discriminate cancer patients from normal individuals, machine-learning methods, such as feature selection and classification, have already been involved in the analysis of mass spectrometry (MS) data with some success. However, the performance of existing machine learning methods for MS data analysis still needs improving. The study in this paper proposes a wavelet-based pre-processing approach to MS data analysis. The approach applies wavelet-based transforms to MS data with the aim of de-noising the data that are potentially contaminated in acquisition. The effects of the selection of wavelet function and decomposition level on the de-noising performance have also been investigated in this study. Our comparative experimental results demonstrate that the proposed de-noising pre-processing approach has potentials to remove possible noise embedded in MS data, which can lead to improved performance for existing machine learning methods in cancer detection.
Cancer detection, Mass spectrometry, Wavelet transforms, De-noising, Linear discriminate analysis, Principal component analysis, Probabilistic classification
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