I understand that an RGB to HSV conversion should take RGB values 0-255 and convert to HSV values [0-360, 0-1, 0-1]. For example see this converter in java:

When I run matplotlib.colors.rbg_to_hsv on an image, it seems to output values [0-1, 0-1, 0-360] instead. However, I have used this function on an image like this, and it seems to be working in the right order [H,S,V], just the V is too large.

Example:

```
In [1]: import matplotlib.pyplot as plt
In [2]: import matplotlib.colors as colors
In [3]: image = plt.imread("/path/to/rgb/jpg/image")
In [4]: print image
[[[126 91 111]
[123 85 106]
[123 85 106]
...,
In [5]: print colors.rgb_to_hsv(image)
[[[ 0 0 126]
[ 0 0 123]
[ 0 0 123]
...,
```

Those are not 0s, they're some number between 0 and 1.

Here is the definition from matplotlib.colors.rgb_to_hsv

```
def rgb_to_hsv(arr):
"""
convert rgb values in a numpy array to hsv values
input and output arrays should have shape (M,N,3)
"""
out = np.zeros(arr.shape, dtype=np.float)
arr_max = arr.max(-1)
ipos = arr_max > 0
delta = arr.ptp(-1)
s = np.zeros_like(delta)
s[ipos] = delta[ipos] / arr_max[ipos]
ipos = delta > 0
# red is max
idx = (arr[:, :, 0] == arr_max) & ipos
out[idx, 0] = (arr[idx, 1] - arr[idx, 2]) / delta[idx]
# green is max
idx = (arr[:, :, 1] == arr_max) & ipos
out[idx, 0] = 2. + (arr[idx, 2] - arr[idx, 0]) / delta[idx]
# blue is max
idx = (arr[:, :, 2] == arr_max) & ipos
out[idx, 0] = 4. + (arr[idx, 0] - arr[idx, 1]) / delta[idx]
out[:, :, 0] = (out[:, :, 0] / 6.0) % 1.0
out[:, :, 1] = s
out[:, :, 2] = arr_max
return out
```

I would use one of the other rgb_to_hsv conversions like colorsys, but this is the only vectorized python one I have found. Can we figure this out? Do we need to report it on github?

Matplotlib 1.2.0 , numpy 1.6.1 , Python 2.7 , Mac OS X 10.8