I'm trying to visualize a list of 2048280 integers which are either 1's or 0's. There is a function that outputs this list from a (width=1515 height=1352) image file. The function
test_results = [(numpy.argmax(SomeFunctionReturningAnArrayForEachGivenPixel))
for y in xrange(1352) for x in range(1532)]
returns an array of size 2058280 (=1515x1352) = as expected. For each y, 1532 values of 1/0 are returned and stored in the array.
Now, when this "test_results" array is returned, I want to save it as an image. So I np.reshape() the array to size (1352,1515,1). All is fine. Logically, I should save this list as a grayscale image. I changed the ndarray data type to 'unit8' and multiplied the pixel values by 127 or 255.
But no matter what I do, the Image.fromarray() function keeps saying that either 'it cannot handle this data type' or 'too many dimensions' or simply gives an error. When I debug it into the Image functions, it looks like the Image library cannot retrieve the array's 'stride'!
All the examples on the net simply reshape the list into an array and save them as an image! Is there anything wrong with my list?
I have already tried various modes ('RGB' , 'L' , '1'). I also changed the data type of my array into uint8, int8, np.uint8(), uint32..
result=self.evaluate(test_data,box) #returns the array
re_array= np.asarray(result,dtype='uint8')
res2 = np.reshape(reray,(1352,1515,1))
res3 =(res2*255)
i = Image.fromarray(res3,'1') ## Raises the exception
i.save('me.png')