# Convert own image to MNIST's image

I am newbie of tensorflow. I trained the digit prediction model using MNIST's train data. And then I test the model using my own image. It cannot predict the actual result.

The problems are :

1. MNIST's images are needed black and white
2. The images are size normalized to fit in a 20x20 pixel box and there are centered in a 28x28 image using the center of mass.
3. I don't want to use `OpenCV`

The question is How to shift my own handwritten digit image to the center of 28x28 image. Own image can be any color and that image to change Black and White MNIST's image

``````from PIL import Image, ImageFilter

def imageprepare(argv):
"""
This function returns the pixel values.
The imput is a png file location.
"""
im = Image.open(argv).convert('L')
width = float(im.size)
height = float(im.size)
newImage = Image.new('L', (28, 28), (255))  # creates white canvas of 28x28 pixels

if width > height:  # check which dimension is bigger
# Width is bigger. Width becomes 20 pixels.
nheight = int(round((20.0 / width * height), 0))  # resize height according to ratio width
if (nheight == 0):  # rare case but minimum is 1 pixel
nheight = 1
# resize and sharpen
img = im.resize((20, nheight), Image.ANTIALIAS).filter(ImageFilter.SHARPEN)
wtop = int(round(((28 - nheight) / 2), 0))  # calculate horizontal position
newImage.paste(img, (4, wtop))  # paste resized image on white canvas
else:
# Height is bigger. Heigth becomes 20 pixels.
nwidth = int(round((20.0 / height * width), 0))  # resize width according to ratio height
if (nwidth == 0):  # rare case but minimum is 1 pixel
nwidth = 1
# resize and sharpen
img = im.resize((nwidth, 20), Image.ANTIALIAS).filter(ImageFilter.SHARPEN)
wleft = int(round(((28 - nwidth) / 2), 0))  # caculate vertical pozition
newImage.paste(img, (wleft, 4))  # paste resized image on white canvas

# newImage.save("sample.png

tv = list(newImage.getdata())  # get pixel values

# normalize pixels to 0 and 1. 0 is pure white, 1 is pure black.
tva = [(255 - x) * 1.0 / 255.0 for x in tv]
print(tva)
return tva

x=imageprepare('./image.png')#file path here
print(len(x))# mnist IMAGES are 28x28=784 pixels
``````

I would use numpy recipe like this one -- https://www.kaggle.com/c/digit-recognizer/forums/t/6366/normalization-and-centering-of-images-in-mnist

You could probably remap this to pure TensorFlow pipeline, but I'm not sure it's necessary given that it's tiny images.

Also you would get better accuracy if you went the other way -- instead of normalizing your input data, make your network robust to lack of normalization by training on a larger dataset of randomly shifted/rescaled MNIST digits.