scholarly journals Reconstruction of volumetric reflectance using spatio-sequential frequency correlation imaging

Author(s):  
Tsuyoshi Takatani ◽  
Takahito Aoto ◽  
Kenichiro Tanaka ◽  
Takuya Funatomi ◽  
Yasuhiro Mukaigawa
2019 ◽  
pp. 1604-1619
Author(s):  
Priyam Dhani ◽  
Tanu Sharma

The chief aim of this article is to examine the emotional intelligence (EI) and personality traits as the predictors of job performance of IT employees in India. To obtain this, the data was collected from 158 middle management employees working in Indian IT sector through random sampling method with the help of three scales such as DKEIT, JPI, and MPI. After data collection, the study carried out a different statistical analysis which includes frequency, correlation and regression analysis through SPSS 23.0 version. The study findings reported that both EI and Personality Traits impact the performance of job of IT employees, i.e. both Personality Traits and EI operate as a predictor of Job Performance of Indian IT employees. Based on which, the article gives few recommendations to future researchers.


2019 ◽  
Vol 9 (4) ◽  
pp. 777 ◽  
Author(s):  
Gaoyuan Pan ◽  
Shunming Li ◽  
Yanqi Zhu

Traditional correlation analysis is analyzed separately in the time domain or the frequency domain, which cannot reflect the time-varying and frequency-varying characteristics of non-stationary signals. Therefore, a time–frequency (TF) correlation analysis method of time series decomposition (TD) derived from synchrosqueezed S transform (SSST) is proposed in this paper. First, the two-dimensional time–frequency matrices of the signals is obtained by synchrosqueezed S transform. Second, time series decomposition is used to transform the matrices into the two-dimensional time–time matrices. Third, a correlation analysis of the local time characteristics is carried out, thus attaining the time–frequency correlation between the signals. Finally, the proposed method is validated by stationary and non-stationary signals simulation and is compared with the traditional correlation analysis method. The simulation results show that the traditional method can obtain the overall correlation between the signals but cannot reflect the local time and frequency correlations. In particular, the correlations of non-stationary signals cannot be accurately identified. The proposed method not only obtains the overall correlations between the signals, but can also accurately identifies the correlations between non-stationary signals, thus showing the time-varying and frequency-varying correlation characteristics. The proposed method is applied to the acoustic signal processing of an engine–gearbox test bench. The results show that the proposed method can effectively identify the time–frequency correlation between the signals.


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