A quick fix could be try plotting
log(counts) instead of counts on the hexbin -- this will spread the scale such that higher counts are compressed and lower counts are not.
Note though, you'd have to put somewhere that the value being visualised is
counts or else a casual reader would inariably misinterpret the graph.
A better method might be to modify the colour map that you're using.
The in-built maps more or less change from the '0' colour to the '1' colour linearly.
In order to make lower values have more spread in colour than the higher values, you need a non-linear colour map.
To do this you might try
matplotlib.colors, and in particular
Basically, you input the '0' and '1' colours (like blue-->red) and a gamma value. Having gamma > 1.0 increases sensitivity in the lower part of the scale.
If haven't tried, but something like:
import matplotlib.colors as colors
# colourmap from green to red, biased towards the blue end.
# Try out different gammas > 1.0
cmap = colors.LinearSegmentedColormap.from_list('nameofcolormap',['g','r'],gamma=2.0)
# feed cmap into hexbin
hexbin( ...., cmap=cmap )