One straightforward way to do this is to leverage the de-duplication that occurs when casting a list of all pixels as a set:

```
unique_pixels = np.vstack({tuple(r) for r in img.reshape(-1,3)})
```

Another way that might be of practical use, depending on your reasons for extracting unique pixels, would be to use Numpy’s `histogramdd`

function to bin image pixels to some pre-specified fidelity as follows (where it is assumed pixel values range from 0 to 1 for a given image channel):

```
n_bins = 10
bin_edges = np.linspace(0, 1, n_bins + 1)
bin_centres = (bin_edges[0:-1] + bin_edges[1::]) / 2.
hist, _ = np.histogramdd(img.reshape(-1, 3), bins=np.vstack(3 * [bin_edges]))
unique_pixels = np.column_stack(bin_centres[dim] for dim in np.where(hist))
```