# Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers)

I tried to run the graph cut algorithm for a slice of an MRI after converting it into PNG format. I keep encountering the following problem:

``````Clipping input data to the valid range for imshow with RGB data ([0..1] for floats or [0..255] for integers).
``````

This is even after setting `vmin` and `vmax` as follows:

``````plt.imshow(out, vmin=0, vmax=255)
``````

Cast the image to `np.uint8` after scaling `[0, 255]` range will dismiss this warning. It seems like a feature in `matplotlib`, as discussed in this issue.

``````plt.imshow((out * 255).astype(np.uint8))
``````

Instead of `plt.imshow(out)`, use `plt.imshow(out.astype('uint8'))`. That's it!

If you want to show it, you can use `img/255`.

Or

``````np.array(img,np.int32)
``````

The reason is that if the color intensity is a float, then matplotlib expects it to range from 0 to 1. If an int, then it expects 0 to 255. So you can either force all the numbers to int or scale them all by 1/255.

As the warning is saying, it is clipping the data in between (0,1).... I tried above methods the warning was gone but my images were having missing pixel values. So I tried following steps for my numpy array Image (64, 64, 3). Step 1: Check the min and max values of array by

``````maxValue = np.amax(Image)
minValue = np.amin(Image)
``````

For my case min values of images were negative and max value positive, but all were in between about (-1, 1.5) so Step 2: I simply clipped the data before imshow by

``````Image = np.clip(Image, 0, 1)
plt.imshow(Image)
``````

Note if your pixel values are ranged something like (-84, 317) etc. Then you may use following steps

``````Image = Image/np.amax(Image)
Image = np.clip(Image, 0, 1)
plt.imshow(Image)
``````

For Pytorch based grad_cam I was getting similar errors in `show_cam_on_image` and what worked cleanly was

``````input_image = Image.open(filename)
img=np.array(input_image.resize((227,227)),np.float32)
img *= (1.0/img.max())
``````

this solved the problem:

``````plt.imshow(image..astype(np.uint8) / 255)
``````

I had similar issues with you and I solved by reversing the normalization.

In my case I was loading the image using PIL and used torchvision transform functions.

I first used ToTensor() method which will scale the data into range [0..1] and then applied Normalize() method which will produce the negative values since we are making our data to follow standard normal distribution.

As the warning message says, if our data is floats we should make sure our data are in range of [0..1]. To do so, we should reverse back our data to which have had values in range of [0..1]. So I reversed the normalization and it worked.

You can take a look at this link.

Hope this helps.

Good luck.

Simply make it within this range [0:1]

if it is between [-1, 1] after calling the amax() and amin() then

``````img = img / 2 + 0.5
``````

if it is between [0, 250]

``````img = img / 250
``````

Just use `.astype("uint8")`, therefore you should have something like:

``````plt.imshow(image.astype("uint8"))
``````

I had a similar problem that was solved through first casting the image to a numpy array.

``````plt.imshow(image.numpy().astype("uint8"))
``````

plt.show(Image) Expect the image range to be between 0 to 1 if image dtype`float` and 0-255 if image dtype `int`

type `image.dtype` if it floats then the problem is that it's range -1 to 1, and you need to make the range between 0 and 1, and this is how you do it:

``````image=(image+1)/2
``````

if 'image.dtype output int then the problem is that values are 0 and 1 and its type is int so convert type to float

``````np.array(img,np.float32)
``````

or multiple values of image by 255 so values between 0 and 1 become between 0 and 255

``````img=img*255
``````