# Rolling median algorithm in C

I am currently working on an algorithm to implement a rolling median filter (analogous to a rolling mean filter) in C. From my search of the literature, there appear to be two reasonably efficient ways to do it. The first is to sort the initial window of values, then perform a binary search to insert the new value and remove the exiting one at each iteration.

The second (from Hardle and Steiger, 1995, JRSS-C, Algorithm 296) builds a double-ended heap structure, with a maxheap on one end, a minheap on the other, and the median in the middle. This yields a linear-time algorithm instead of one that is O(n log n).

Here is my problem: implementing the former is doable, but I need to run this on millions of time series, so efficiency matters a lot. The latter is proving very difficult to implement. I found code in the Trunmed.c file of the code for the stats package of R, but it is rather indecipherable.

Does anyone know of a well-written C implementation for the linear time rolling median algorithm?

-
Just implemented a moving mean... moving median is somewhat more tricky. Try googling moving median. –  Matt Aug 20 '09 at 23:11
Tried google and google code search. It turned up the Trunmed.c code and an implementation in another language for a SGI port of the Trunmed code (from what I could tell). Also, the JRSS algorithm I cited is apparently the only one in the journal's series for which the original code was not archived. –  AWB Aug 20 '09 at 23:23
How many numbers do you have in each time series? Even with a million of them, if you only have a few thousand numbers, it might not take longer than a minute or two to run (if your code is written efficiently). –  Dana the Sane Aug 21 '09 at 0:37
That code reference is ancient! R 2.2.0 is over three years old, we are currently at R 2.9.1 with 2.9.2 slated for September 24 and R 2.10.0 in October. –  Dirk Eddelbuettel Aug 21 '09 at 1:03
how is the two heaps solution linear? it's O(n log k) where k is the window size because the heap's delete is O(log k). –  yairchu Aug 30 '09 at 9:51

I know its been two days, but I'm posting just in case it helps.

This problem was once posed at a TopCoder competition. You can find a discussion on several possible solutions in the Match Editorial (scroll down to FloatingMedian). For me, the C++ multiset approach looks easiest to code.

-
Yes, TopCoder forums and Tutorials are the best place to look for algorithm based coding. –  Shamim Hafiz Nov 9 '10 at 6:34

I have looked at R's src/library/stats/src/Trunmed.c a few times as I wanted something similar too in a standalone C++ class / C subroutine. Note that this are actually two implementations in one, see src/library/stats/man/runmed.Rd (the source of the help file) which says

\details{
Apart from the end values, the result \code{y = runmed(x, k)} simply has
\code{y[j] = median(x[(j-k2):(j+k2)])} (k = 2*k2+1), computed very
efficiently.

The two algorithms are internally entirely different:
\describe{
\item{"Turlach"}{is the Härdle-Steiger
algorithm (see Ref.) as implemented by Berwin Turlach.
A tree algorithm is used, ensuring performance \eqn{O(n \log
k)}{O(n * log(k))} where \code{n <- length(x)} which is
asymptotically optimal.}
\item{"Stuetzle"}{is the (older) Stuetzle-Friedman implementation
which makes use of median \emph{updating} when one observation
enters and one leaves the smoothing window.  While this performs as
\eqn{O(n \times k)}{O(n * k)} which is slower asymptotically, it is
considerably faster for small \eqn{k} or \eqn{n}.}
}
}


It would be nice to see this re-used in a more standalone fashion. Are you volunteering? I can help with some of the R bits.

Edit 1: Besides the link to the older version of Trunmed.c above, here are current SVN copies of

Edit 2: Ryan Tibshirani has some C and Fortran code on fast median binning which may be a suitable starting point for a windowed approach.

-
Thanks Dirk. Once I get a clean solution, I am planning on releasing it under GPL. I would be interested in setting up a R and Python interfaces as well. –  AWB Aug 21 '09 at 15:45
@AWB What ended up happening with this idea? Did you incorporate your solution into a package? –  Xu Wang Oct 31 '11 at 2:50

-
Thanks John. This looks quite useful. –  AWB Aug 21 '09 at 15:46

Here's a simple algorithm for quantized data (months later):

""" median1.py: moving median 1d for quantized, e.g. 8-bit data

Method: cache the median, so that wider windows are faster.
The code is simple -- no heaps, no trees.

Keywords: median filter, moving median, running median, numpy, scipy

See Perreault + Hebert, Median Filtering in Constant Time, 2007,
http://nomis80.org/ctmf.html: nice 6-page paper and C code,
mainly for 2d images

Example:
y = medians( x, window=window, nlevel=nlevel )
uses:
med = Median1( nlevel, window, counts=np.bincount( x[0:window] ))
med.addsub( +, - )  -- see the picture in Perreault
m = med.median()  -- using cached m, summ

How it works:
picture nlevel=8, window=3 -- 3 1s in an array of 8 counters:
counts: . 1 . . 1 . 1 .
sums:   0 1 1 1 2 2 3 3
^ sums[3] < 2 <= sums[4] <=> median 4
addsub( 0, 1 )  m, summ stay the same
addsub( 5, 1 )  slide right
addsub( 5, 6 )  slide left

Updating counts in an addsub is trivial, updating sums is not.
But we can cache the previous median m and the sum to m summ.
The less often the median changes, the faster;
so fewer levels or *wider* windows are faster.
(Like any cache, run time varies a lot, depending on the input.)

scipy.signal.medfilt -- runtime roughly ~ window size
http://stackoverflow.com/questions/1309263/rolling-median-algorithm-in-c

"""

from __future__ import division
import numpy as np  # bincount, pad0

__date__ = "2009-10-27 oct"
__author_email__ = "denis-bz-py at t-online dot de"

#...............................................................................
class Median1:
""" moving median 1d for quantized, e.g. 8-bit data """

def __init__( s, nlevel, window, counts ):
s.nlevel = nlevel  # >= len(counts)
s.window = window  # == sum(counts)
s.half = (window // 2) + 1  # odd or even
s.setcounts( counts )

def median( s ):
""" step up or down until sum cnt to m-1 < half <= sum to m """
if s.summ - s.cnt[s.m] < s.half <= s.summ:
return s.m
j, sumj = s.m, s.summ
if sumj <= s.half:
while j < s.nlevel - 1:
j += 1
sumj += s.cnt[j]
# print "j sumj:", j, sumj
if sumj - s.cnt[j] < s.half <= sumj:  break
else:
while j > 0:
sumj -= s.cnt[j]
j -= 1
# print "j sumj:", j, sumj
if sumj - s.cnt[j] < s.half <= sumj:  break
s.m, s.summ = j, sumj
return s.m

s.cnt[sub] -= 1
assert s.cnt[sub] >= 0, (add, sub)
s.summ += 1
if sub <= s.m:
s.summ -= 1

def setcounts( s, counts ):
assert len(counts) <= s.nlevel, (len(counts), s.nlevel)
if len(counts) < s.nlevel:
counts = pad0__( counts, s.nlevel )  # numpy array / list
sumcounts = sum(counts)
assert sumcounts == s.window, (sumcounts, s.window)
s.cnt = counts
s.slowmedian()

def slowmedian( s ):
j, sumj = -1, 0
while sumj < s.half:
j += 1
sumj += s.cnt[j]
s.m, s.summ = j, sumj

def __str__( s ):
return ("median %d: " % s.m) + \
"".join([ (" ." if c == 0 else "%2d" % c) for c in s.cnt ])

#...............................................................................
def medianfilter( x, window, nlevel=256 ):
""" moving medians, y[j] = median( x[j:j+window] )
-> a shorter list, len(y) = len(x) - window + 1
"""
assert len(x) >= window, (len(x), window)
# np.clip( x, 0, nlevel-1, out=x )
# cf http://scipy.org/Cookbook/Rebinning
cnt = np.bincount( x[0:window] )
med = Median1( nlevel=nlevel, window=window, counts=cnt )
y = (len(x) - window + 1) * [0]
y[0] = med.median()
for j in xrange( len(x) - window ):
y[j+1] = med.median()
return y  # list
# return np.array( y )

""" pad x with 0 s, numpy array or list """
n = tolen - len(x)
if n > 0:
try:
x = np.r_[ x, np.zeros( n, dtype=x[0].dtype )]
except NameError:
x += n * [0]
return x

#...............................................................................
if __name__ == "__main__":
Len = 10000
window = 3
nlevel = 256
period = 100

np.set_printoptions( 2, threshold=100, edgeitems=10 )
# print medians( np.arange(3), 3 )

sinwave = (np.sin( 2 * np.pi * np.arange(Len) / period )
+ 1) * (nlevel-1) / 2
x = np.asarray( sinwave, int )
print "x:", x
for window in ( 3, 31, 63, 127, 255 ):
if window > Len:  continue
print "medianfilter: Len=%d window=%d nlevel=%d:" % (Len, window, nlevel)
y = medianfilter( x, window=window, nlevel=nlevel )
print np.array( y )

# end median1.py

-

I won't vouch for "well-written", but I've done a C implementation here. A few more details are in this question: Rolling median in C - Turlach implementation

-
Great, fast and clear implementation based on min-median-max heap. Very good work. –  Johannes Rudolph Nov 10 '11 at 17:05

I couldn't find a modern implementation of a c++ data structure with order-statistic so ended up implementing both ideas in top coders link suggested by MAK ( Match Editorial: scroll down to FloatingMedian).

## Two multisets

The first idea partitions the data into two data structures (heaps, multisets etc) with O(ln N) per insert/delete does not allow the quantile to be changed dynamically without a large cost. I.e. we can have a rolling median, or a rolling 75% but not both at the same time.

## Segment tree

The second idea uses a segment tree which is O(ln N) for insert/deletions/queries but is more flexible. Best of all the "N" is the size of your data range. So if your rolling median has a window of a million items, but your data varies from 1..65536, then only 16 operations are required per movement of the rolling window of 1 million!!

The c++ code is similar to what Denis posted above ("Here's a simple algorithm for quantized data")

## GNU Order Statistic Trees

Just before giving up, I found that stdlibc++ contains order statistic trees!!!

These have two critical operations:

iter = tree.find_by_order(value)
order = tree.order_of_key(value)


See libstdc++ manual policy_based_data_structures_test (search for "split and join").

I have wrapped the tree for use in a convenience header for compilers supporting c++0x/c++11 style partial typedefs:

#if !defined(GNU_ORDER_STATISTIC_SET_H)
#define GNU_ORDER_STATISTIC_SET_H
#include <ext/pb_ds/assoc_container.hpp>
#include <ext/pb_ds/tree_policy.hpp>

// A red-black tree table storing ints and their order
// statistics. Note that since the tree uses
// tree_order_statistics_node_update as its update policy, then it
// includes its methods by_order and order_of_key.
template <typename T>
using t_order_statistic_set = __gnu_pbds::tree<
T,
__gnu_pbds::null_type,
std::less<T>,
__gnu_pbds::rb_tree_tag,
__gnu_pbds::tree_order_statistics_node_update>;

#endif //GNU_ORDER_STATISTIC_SET_H

-
Actually, the libstdc++ extension containers do not allow for multiple values !by design! As suggested by my name above (t_order_statistic_set), multiple values are merged. So, they need a bit more work for our purposes :-( –  Leo Goodstadt Jun 27 '12 at 18:26
We need to 1) make a map of values to count (instead of sets) 2) the branch sizes should reflect the count of the keys (libstdc++-v3/include/ext/pb_ds/detail/tree_policy/order_statistics_imp.hpp) inherit from the tree, and 3) overload insert() to increase the count / call update_to_top() if the value is already present 4) overload erase() to decrease the count / call update_to_top() if the value is not unique (See libstdc++-v3/include/ext/pb_ds/detail/rb_tree_map_/rb_tree_.hpp) Any volunteers?? –  Leo Goodstadt Jun 27 '12 at 18:37

I use this incremental median estimator:

median += eta * sgn(sample - median)


which has the same form as the more common mean estimator:

mean += eta * (sample - mean)


Here eta is a small learning rate parameter (e.g. 0.001), and sgn() is the signum function which returns one of {-1, 0, 1}. (Use a constant eta like this if the data is non-stationary and you want to track changes over time; otherwise, for stationary sources use something like eta=1/n to converge, where n is the number of samples seen so far.)

Also, I modified the median estimator to make it work for arbitrary quantiles. In general, a quantile function (http://en.wikipedia.org/wiki/Quantile_function) tells you the value that divides the data into two fractions: p and 1-p. The following estimates this value incrementally:

quantile += eta * (sgn(sample - quantile) + 2.0 * p - 1.0)


The value p should be within [0,1]. This essentially shifts the sgn() function's symmetrical output {-1,0,1} to lean toward one side, partitioning the data samples into two unequally-sized bins (fractions p and 1-p of the data are less than/greater than the quantile estimate, respectively). Note that for p=0.5, this reduces to the median estimator.

-
Cool, Here's a modification that adjusts 'eta' based on the running mean...(mean is used as a rough estimate of the median so it converges on big values at the same rate it converges on tiny values). i.e. eta is tuned automatically. stackoverflow.com/questions/11482529/… –  Jeff McClintock Mar 1 at 5:25

For the double heap solution java code is available in following site.

Running Median

-

If you have the ability to reference values as a function of points in time, you could sample values with replacement, applying bootstrapping to generate a bootstrapped median value within confidence intervals. This may let you calculate an approximated median with greater efficiency than constantly sorting incoming values into a data structure.

-

For those who need a running median in Java...PriorityQueue is your friend. O(log N) insert, O(1) current median, and O(N) remove. If you know the distribution of your data you can do a lot better than this.

public class RunningMedian {
// Two priority queues, one of reversed order.
PriorityQueue<Integer> lower = new PriorityQueue<Integer>(10,
new Comparator<Integer>() {
public int compare(Integer arg0, Integer arg1) {
return (arg0 < arg1) ? 1 : arg0 == arg1 ? 0 : -1;
}
}), higher = new PriorityQueue<Integer>();

public void insert(Integer n) {
if (lower.isEmpty() && higher.isEmpty())
else {
if (n <= lower.peek())
else
rebalance();
}
}

void rebalance() {
if (lower.size() < higher.size() - 1)
else if (higher.size() < lower.size() - 1)
}

public Integer getMedian() {
if (lower.isEmpty() && higher.isEmpty())
return null;
else if (lower.size() == higher.size())
return (lower.peek() + higher.peek()) / 2;
else
return (lower.size() < higher.size()) ? higher.peek() : lower
.peek();
}

public void remove(Integer n) {
if (lower.remove(n) || higher.remove(n))
rebalance();
}
}

-
c++ has order statistic trees from gnu in an extension to the standard library. See my post below. –  Leo Goodstadt Jun 27 '12 at 14:33

Here is one that can be used when exact output is not important (for display purposes etc.) You need totalcount and lastmedian, plus the newvalue.

{
totalcount++;
newmedian=lastmedian+(newvalue>lastmedian?1:-1)*(lastmedian==0?newvalue: lastmedian/totalcount*2);
}


Produces quite exact results for things like page_display_time.

Rules: the input stream needs to be smooth on the order of page display time, big in count (>30 etc), and have a non zero median.

Example: page load time, 800 items, 10ms...3000ms, average 90ms, real median:11ms

After 30 inputs, medians error is generally <=20% (9ms..12ms), and gets less and less. After 800 inputs, the error is +-2%.

Another thinker with a similar solution is here: Median Filter Super efficient implementation

-