SNR =============== Signal-to-Noise Ratio (SNR) **Inputs** - Data: input dataset **Outputs** - Signal-to-noise ratio: signal-to-noise ratio dataset - *SNR = \\(\frac{\overline{Spectra_{x, y}}}{\sigma _{x, y}}\\)* - Averages: averaged dataset - *Averages = \\(\overline{Spectra_{x, y}}\\)* - Standard Deviation: standard deviation dataset - *Standard Deviation = \\(\sigma _{x, y}\\)* The **SNR** widget computes the SNR, average, or standard deviation of spectra. It can output the results of an entire dataset or by coordinates (x, y). ------------ Use *Select axis: x* to select an axis that will act as the first element for your coordinate system defined by a numeric meta. Use *Select axis: y* to select an axis that will act as the second element for your coordinate system defined by a numeric meta. ![](images/snr_print.png) In the example above, the result will be: **output = Signal-to-noise ratio(column, row)** *SNR = \\(\frac{\overline{Spectra_{column, row}}}{\sigma _{column, row}}\\)* ________________ If you want to select only one axis: ![](images/snr_average_x.png) **output = Average(x)** *Average = \\(\overline{Spectra_{column}}\\)* or ![](images/snr_std_y.png) **output = Standard Deviation(x)** *Standard Deviation = \\(\sigma _{column}\\)* ___________ If you want the result of the complete data set, you can just leave both as None.