This question is in continuation of the solution provided by tcaswell (answer #2) for my question: Is there a way to convert pyplot.imshow() object to numpy array?
Consider the following python code:
import pylab import numpy as np a = np.array( ( 30, 129 ) , dtype = np.float32 ) b = np.array( ( 30, 129 ) , dtype = np.int32 ) my_cm = pylab.cm.get_cmap('jet') a_mapped_data = my_cm( a ) b_mapped_data = my_cm( b )
I am using a small array to save space, but this is what is seen even when large arrays are used.
>>> a array([ 30., 129.], dtype=float32) >>> b array([ 30, 129]) >>> a_mapped_data array([[ 0.5, 0. , 0. , 1. ], [ 0.5, 0. , 0. , 1. ]]) >>> b_mapped_data array([[ 0. , 0. , 1. , 1. ], [ 0.5028463 , 1. , 0.46489564, 1. ]])
I don't seem to understand the behavior here. Even though the values are same,
cm.get_map() instance is producing different results for
numpy.float32 data types. Is there something wrong with the code above? Please help out with this. I need to plot 2D arrays of type numpy.float.
I am using python 2.7.3 32bit on Windows7 x64 Home Basic
EDIT : Solution for those who are facing the same problem as I did
The script below performs a color map on the input data and the map is converted to image as is, without using
pylab.pcolor and without any scales or borders. I thank everyone contributed and helped me understand on how it can be done.
import pylab import numpy as np a = np.random.random( (512, 512) )*100 # a is a 2D array of random data not in the range of 0.0 to 1.0 # normalize the data normed_a = ( a - a.min() )/( a.max() - a.min() ) # now create an instance of pylab.cm.get_cmap() my_cm = pylab.cm.get_cmap('jet_r') # create the map mapped_a = my_cm( normed_a ) # to display the map, opencv is being used # import opencv import cv2 as cv # convert mapped data to 8 bit unsigned int mapped_au8 = (255 * mapped_a).astype('uint8') # show the image cv.imshow( 'a', mapped_au8 ) cv.waitKey( 0 ) cv.destroyAllWindows()
EDIT : Return type
cm.get_cmap instance is of RGBA format but OpenCV by default operates on BGR format. Hence before displaying any image obtained by converting return values of
cm.get_cmap() instance as in the above code, convert it to BGR format ( The ALPHA channel is anyway stripped by default in opencv before the image is displayed so dont bother to convert it into BGRA unless necessary ). The code below gives a better explanation:
mapped_au8 = (255 * mapped_a).astype('uint8') #convert mapped_au8 into BGR fromat before display mapped_u8 = cv.cvtColor( mapped_au8, cv.COLOR_RGBA2BGR ) # show the image cv.imshow( 'a', mapped_au8 ) cv.waitKey( 0 ) cv.destroyAllWindows()