On Wed, Feb 9, 2011 at 1:50 AM, Eric Firing <efir...@hawaii.edu> wrote:

> On 02/08/2011 02:39 PM, Christoph Gohlke wrote:
> >
>
> >
> > Please consider the attached patch for the _image.frombyte function. It
> > avoids temporary copies in case of non-contiguous input arrays. Copying
> > a 1024x1024 slice out of a contiguous 4096x4096 RGBA or RGB array is
> > about 7x faster (a common case for zooming/panning). Copying contiguous
> > RGB input arrays is ~2x faster. Tested on win32-py2.7.
> >
> > Christoph
> >
>
> Thank you!
>
> Looks good, speeds up zooming and panning on large images as advertised.
>  An 8000x8000 image is actually manageable now.
> interpolation='nearest' is still very slow until the image is
> substantially zoomed, but everything is quite quick with other
> interpolation styles.  The slowness of 'nearest' looks like a basic
> characteristic of the implementation.
>
> I committed the patch in 8966.
>
> Before that I found and committed a big speed-up in Normalize.
>
> Eric
>
>
Bug Report:

At some point between the recent revision and r8934, setting the alpha value
to anythhing but None will cause the image to not show.  I suspect it has
something to do with some of the recent revisions.  Maybe the alpha values
were being converted into an integer, causing them to be zero?  Then again,
even setting alpha to 1 will cause the image to disappear.

Ideas?  Thoughts?  I included an example script below.

Ben Root


Example script:


import numpy as np
import matplotlib.pyplot as plt

z = np.random.random((40, 50))

fig = plt.figure()
ax = fig.add_subplot(1, 2, 1)
ax.imshow(z, alpha=1.0)
ax.set_title('Blank!')

ax = fig.add_subplot(1, 2, 2)
ax.imshow(z, alpha=None)
ax.set_title("Not Blank")



plt.show()
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