I'm trying to get the xlimits of a plot as a python datetime object from a time series plot created with pandas. Using `ax.get_xlim()`

returns the axis limits as a `numpy.float64`

, and I can't figure out how to convert the numbers to a usable datetime.

```
import pandas
from matplotlib import dates
import matplotlib.pyplot as plt
from datetime import datetime
from numpy.random import randn
ts = pandas.Series(randn(10000), index=pandas.date_range('1/1/2000',
periods=10000, freq='H'))
ts.plot()
ax = plt.gca()
ax.set_xlim(datetime(2000,1,1))
d1, d2 = ax.get_xlim()
print "%s(%s) to %s(%s)" % (d1, type(d1), d2, type(d2))
print "Using matplotlib: %s" % dates.num2date(d1)
print "Using datetime: %s" % datetime.fromtimestamp(d1)
```

which returns:

```
262968.0 (<type 'numpy.float64'>) to 272967.0 (<type 'numpy.float64'>)
Using matplotlib: 0720-12-25 00:00:00+00:00
Using datetime: 1970-01-03 19:02:48
```

According to the pandas timeseries docs, pandas uses the numpy.datetime64 dtype. I'm using pandas version '0.9.0'.

I am using `get_xlim()`

instead directly accessing the pandas series because I am using the `xlim_changed`

callback to do other things when the user moves around in the plot area.

## Hack to get usable values

For the above example, the limits are returned in *hours* since the Epoch. So I can convert to *seconds* since the Epoch and use `time.gmtime()`

to get somewhere usable, but this still doesn't feel right.

```
In [66]: d1, d2 = ax.get_xlim()
In [67]: time.gmtime(d1*60*60)
Out[67]: time.struct_time(tm_year=2000, tm_mon=1, tm_mday=1, tm_hour=0, tm_min=0, tm_sec=0, tm_wday=5, tm_yday=1, tm_isdst=0)
```