I am trying to extract an array of ndvi values for each pixel of an blue-filtered image (.jpg format). I used the NDVI=(arrayR-arrayB)/(arrayR+arrayB) however as a result I get a long list of arrays containing different values:

```
array([ 0.44554455, 0.48387097, 0.47368421, ..., 0.14 , 0.14285714, 0.14285714]),
array([ 0.45454545, 0.49450549, 0.48387097, ..., 0.14583333, 0.13207547, 0.14583333]),
array([ 0.48314607, 0.46391753, 0.45454545, ..., 0.14583333, 0.13461538, 0.14583333]),
array([ 0.40186916, 0.44554455, 0.46938776, ..., 0.125 , 0.12280702, 0.18681319]),
array([ 0.40540541, 0.46391753, 0.49473684, ..., 0.16666667, 0.16 , 0.16363636]),
array([ 0.39823009, 0.42056075, 0.47474747, ..., 0.17021277, 0.20454545, 0.15789474]),
array([ 0.51111111, 0.47916667, 0.46 , ..., 0.1588785 , 0.16831683, 0.16190476]),
```

The code used to get these results is:

```
from PIL import Image
from sense_hat import SenseHat
import numpy as numpy
img= Image.open('foo.jpg')
imgR, imgB, imgG = img.split() #get channels
arrR = numpy.asarray(imgR).astype('float64')
arrB = numpy.asarray(imgB).astype('float64')
num = (arrR - arrB)
denom = (arrR + arrB)
if denom.any() == 0: #preventing division by zero.
denom = [0.000001, 0.000001]
arr_ndvi = num/denom
```

Which is actually the NDVI value of each pixel? Is it the average of the numbers inside each array?

`list(arr_ndvi)`

when you print?`arrR`

and`arrB`

are Numpy 2D arrays,`list(arr_ndvi)`

returns instead a list of rows of the NDVI matrix, so each value in each array is the NDVI of the corresponding pixel, e.g.`arr_ndvi[0,0] == 0.44554455`

is the NDVI of the top-left pixel.10more comments