I use osgeo from gdal module for processing geographic raster data.
#Get size of input raster (cols, rows)
cols = ds.RasterXSize #3531
rows = ds.RasterYSize #3314
So to read all the data, I create an array:
data = band.ReadAsArray(0, 0, cols, rows).astype(float)
Result of ReadAsArray is a 2D numpy array. Until here it works.
So in order to further apply the geographic transformation for each pixel in that raster, I need the column index and the row index for each pixel. I think I might need a numpy function to read that out, but I have no clue how that works with a 2D array.
I can access items the array by simply calling its index (e.g. band[0][1]), but I'd need the whole column index and the whole row index separately stored in e.g. col_idx and row_idx.
I tried with something like that, but didn't work:
for idx, val in enumerate(ints):
print idx, val
Any help appreciated!
band[0, 1]
? It is a common notation in NumPy