New answers tagged histogram
0
After poking around, I have come up with the following code that seems to solve the problem. Now I just have to figure out the best way to position the panel.textoutput given that my axes change for each iteration of the loop.
#plot hisotgrams for each spp in 1cm bins
for (i in sp){
BIN_WIDTH <- 1 #desired bin width
print(histogram(~ Length..cm. ...
1
An histogarm plot will have number of pixels for the intensity levels.
Yours is an rgb image. So you first need to convert it to an intensity image.
The code here will be:
input = imread ('sample.jpeg');
input=rgb2gray(input);
imhist(input);
imshow(input);
You will be able to get the histogram of the image.
0
I think looping through the Master Word list is a problem. Each time you make a histogram you have to hash every word in the master word list (most of these hashes are just missing, a computationally expensive way to return a 0).
I would hash the master wordlist first, then use that hash to create each histogram, this way you only need to hash every word ...
2
This improves the runtime in my unrepresentative micro benchmark by 1 order of magnitude with Python 3:
mapping = dict((w, i) for i, w in enumerate(masterWordList))
def tfidfVector(cleanStringVector, masterWordList):
featureVector = [0] * len(masterWordList)
for w in cleanStringVector:
featureVector[mapping[w]] += 1
return ...
2
the function hist can accept a vecotr of the center of bins. These centers can be negative.
I think that the issue is when unique(x) returns a negative scalar then hist treats it as the number of bins rather than the bins' centers
workaround
ux = unique( x );
if numel( ux ) == 1
% there is only one unique value in vecor x -
% no need to do a ...
1
The following looks weird because you only gave us six data points in your dput. You can plot a line plot without the x-axis and add it afterwards like so:
h <- hist(ts, breaks=7*24, plot=FALSE)
plot(x=h$mids, y=h$density, type="l", xaxt="n")
axis(1,at=ts,labels=format(ts,"%b-%d"))
0
Maybe I'm assuming too much. But your data makes it look like there are strong 'edges' around the 4 'mountains'. So you should look at those edge/ridge detection group of algorithms for idea.
My simplest answer would be to try thresholding first. see if that works.
If not, maybe applying one-dimensional version of filter such as Sobel filter.
They should ...
0
You could apply a simple Impulse Response Filter such as Boxcar or any other means of smoothing to your histogram to reduce the high frequency components. After that you could calculate the local minima and maxima and pin-point the individual peaks (max-min-max-min per peak) within a bandwidth which would help to narrow down the ROI.
Here is a simple Boxcar ...
0
Add a facet to your query something like the following:
{"facets": {
"daily_volume": {
"date_histogram": {
"size": 100,
"field": "created_at",
"interval": "day"
"order": "time"
}
}
}
This returns a nice set of ordered data for the number of items per day.
I then feed this to a Google Chart (the ColumnChart works ...
0
or you could transpose the data:
#label step_1 step_2 step_3
foo 1 1.5 2.3
bar .75 1.3 2.1
... and then use following commands:
set style data histograms
set boxwidth .7
set style histogram rowstacked
plot for [COL=2:4] "all.dat" using COL:xticlabels(1)
this adds a legend which you can suppress or customize.
0
you could combine all data in one tab-separated file all.dat:
foo bar
1 .75
1.5 1.3
2.3 2.1
and then use following commands:
set style data histograms
set style histogram columnstacked
set boxwidth .7
plot for [COL=1:2] "all.dat" using COL title columnhead
0
You can create your own histogram in Python using for example matplotlib. If you want to see one example about how this could be implemented, you can refer to this answer.
In this specific case, you can use doing:
temperature = [4, 3, 1, 4, 6, 7, 8, 3, 1]
radius = [0, 2, 3, 4, 0, 1, 2, 10, 7]
density = [1, 10, 2, ...
0
Have you tried using the Cr channel from the YCbCr format? I had some luck with Cr when I had previously worked on hand detection using skin colour. Also, there is this paper, which uses a nice method for detecting hands. But keep in mind that as long as you use skin colour, the detection will not work for all hands, but can be tuned for a given user or a ...
2
Other answers given here probably already answer your question, but for the sake of completeness, if you do not wish to depend on the ggplot package (I cannot really think of a reason for this, but you might) you could use a combination of aggregate and barplot.
> ADF <- aggregate(DF$V2, by = list(V1=DF$V1), FUN = sum)
> barplot(ADF$x, ...
3
If you want to get the aggregated sums out of the data and plot them later (the ggplot solution does it all) then, starting from DF:
> aggregate(V2~V1,data=DF,sum)
V1 V2
1 2 13
2 3 13
3 5 3
4 7 3
2
DF <- read.table(text="2 7
3 9
5 3
2 4
7 3
3 4
2 2")
library(ggplot2)
ggplot(DF,aes(x=V1,y=V2)) +stat_summary(fun.y=sum,geom="bar")
0
You have to decide how many bins you need in the histogram. For eg. the Matlab histogram function takes these forms
imhist(I)
imhist(I, n)
imhist(X, map)
In the first case, the number of bins is by default used as 256. So, if you have 16bit input, these will be scaled down to 8 bit and split into 256 bin histogram.
In the second one, you can specify ...
0
If this is for display purposes you can scale back the pixels to keep the range from 0-255 for instance:
double scalingFactor = 255/65535;
for (pixel in pixels)
{
red_histo[(int)(scalingFactor * pixel.red)]++;
}
This will allow the upper range of the 16 bit pixel to come in at 255 and lower range of the 16 bit pixel to come in at 0.
0
This Stack Overflow Question May have the answer you are looking for.
I do not know if there is a "standard" way.
0
if your matrix consists of 2 coloums, you could use the "bar3" command
fx. A=[pitch,number]
bar3(A)
that should generate a 3d histogram of your data
0
You are missing the dp term in the sum
dp = (x(2)-x(1));
area = sum(p)*dp;
H = -sum( (p*dp) * log2(p) );
This should bring you close enough...
PS,
be careful when you take log2(p) for sometimes you might have empty bins. You might find nansum useful.
3
You can set the range of the x-axis with xlim(), e.g.:
xlim(0-barwidth,len(number)-0.5)
(but make sure to insert it before savfig()).
0
In this answer there is a solution for 2D and 3D Scatter and Bubble Histograms.
points, sub = hist2d_scatter( radius, density, bins=4 )
points, sub = hist3d_scatter( temperature, density, radius, bins=4 )
Where sub is a matplotlib "Subplot" instance (3D or not) and pointscontains the points used for the scatter plot.
0
In this answer there is a solution for 2D and 3D Histograms of scattered points. The usage is simple:
points, sub = hist2d_scatter( radius, density, bins=4 )
points, sub = hist3d_scatter( temperature, density, radius, bins=4 )
Where sub is a matplotlib "Subplot" instance (3D or not) and pointscontains the points used for the scatter plot.
0
Here it follows two functions: hist2d_scatter and hist3d_scatter; that may fit for your purpose:
def hist2d_scatter( x_data, y_data, bins=10, bubbles=False ):
import numpy as np
import matplotlib.pyplot as pyplot
ax = np.histogram2d( x_data, y_data, bins=bins )
xs = ax[1]
dx = xs[1]-xs[0]
ys = ax[2]
dy = ys[1]-ys[0]
def ...
5
How about this (no texturing still)?
fig = ggplot(test, aes(x = value, fill = condition)) +
geom_histogram(position = "identity", alpha = .8) +
scale_fill_manual(values=c("grey20", "grey60")) + theme_bw()
fig
4
Add:
axes3d()
In case someone tries to run the above code: it is not self-contained, you need to copy the code for hist3d and binplot from ?hist3d.
0
I think the bin-wise average histogram of the 3 should give you what you're looking for.
4
Matplotlib is trying to fill all the way down to 0, but 0 is always off the axes on a log scale (because log(0) is negative infinity).
The fix is calling ax2.set_yscale('log', nonposy='clip'). The change in 1.2.1 was so that this happens automatically when you call hist(..., log=True). If you set the scale manually as you're doing, you always need the ...
1
I don't know what format your histogram has. But usually i would prefer json over pickle. json is not that much faster than pickle, but its a lot more robust. Also to answer your last question. First construct the histogram and then write it to file. That are two logically independent actions and should be separated for a clean code.
edit: Seeing the ...
0
You can still try frequency plot with facet parameter scale="free_y":
ggplot(s.data, aes(major,..count..,fill=major)) +
geom_histogram() + facet_wrap(~ gender, scale="free_y")
0
If the binning is an issue, you could try using plot.density(density(...)). If that curve still looks bad, then you either need to transform your data (as previously suggested), or truncate the display of the x-axis via the xlim= argument supplied to plot() or hist().
2
The relevant section of source code from OpenCV is as follows:
if( method == CV_COMP_CHISQR )
{
for( j = 0; j < len; j++ )
{
double a = h1[j] - h2[j];
double b = h1[j];
if( fabs(b) > DBL_EPSILON )
result += a*a/b;
}
}
So you can see that the difference in your code is this line
...
1
z <- rnorm(100,.3,.2)
hist(z, xlab="", ylab="", main="", yaxt="n")
par(new=TRUE)
plot(density(z), xlab="", ylab="", main="", xaxt="n", yaxt="n")
axis(2, ...) # plug in the relevant values for `at` and `labels`
axis(4, ...) # plug in the relevant values for `at` and `labels`
2
If you use ggplot2 you can use geom_density(aes(y=..scaled..)) and geom_histogram(aes(y = ..ndensity)) to scale similarly
eg
x <- rnorm(400, 10, 5)
y <- rnorm(400, -10, 5)
dd <- rbind(data.frame(value = x, id = 'x'), data.frame(value = y, id = 'y'))
ggplot(dd, aes(x=value)) +
geom_histogram(aes(y=..ndensity..)) +
geom_density(aes(colour = ...
1
Another way of counting the number of data points in a file is by using a system command. This proves useful if you are plotting multiple files, and you don't know the number of points beforehand. I used:
countpoints(file) = system( sprintf("grep -v '^#' %s| wc -l", file) )
file1count = countpoints (file1)
file2count = countpoints (file2)
file3count = ...
1
What does your cost matrix look like?
The worst case scenario would be the one where the weights of both histograms are accumulated in two respective bins which are maximally distant from each other. In this case the maximum distance would be the maximum of your cost matrix (if both histograms have equal total weight).
0
Something like this?
clear all; close all; clc;
format compact
pat=rand(2,500); %500 samples with 2 features each
target=rand(1,500)>0.5; %w0 and w1 assignments
edges=[0:0.1:1];
pat1_w0=histc(pat(1,target==0),edges); %x1|w0
pat1_w0=pat1_w0/sum(pat1_w0); %normalize
pat2_w0=histc(pat(2,target==0),edges); %x2|w0
pat2_w0=pat2_w0/sum(pat1_w0); %normalize
...
1
I came across this question while trying to make a 3D histogram of an HSV image, and encountered the same error. It turns out that the OpenCV documentation is leading us astray here. The docs are written for the C++ API and as such can only be used as a vague guide to the Python cv2 API (although I have found that the docs are misleading for C++ as well at ...
1
Here is the ggplot version of this graph.
require(ggplot2)
require(reshape2)
set.seed(1)
df <- data.frame(x = rnorm(n = 1000, mean = 5, sd = 2),
y = rnorm(n = 1000, mean = 2),
z = rnorm(n = 1000, mean = 10))
ggplot(melt(df), aes(value, fill = variable)) + geom_histogram(position = "dodge")
5
The example comes from using the plotrixpackage. Code was found here. You will first need to install that package before you can access the multihist function:
#install.packages("plotrix")
require(plotrix)
l <- list(rnorm(50),rnorm(50,sd=2),rnorm(50,mean=3))
multhist(l)
0
With opencv api: output histograms could be dense or sparse matrices.
You need to give reference to specific histogram matrix in argument of void calcHist(..) method.
Here is the doc.
2
I'm pretty sure this works, but you don't give data, so it's hard to check. normed=True gives you densities, if you don't pass normed=True, you get weighted sample counts, so if you divide your weighted version (which is really just #successes per bin) by unweighted (# of elements in each bin), you'll end up with % successes.
import matplotlib.pyplot as plt
...
0
public class TestCharCount {
public static void main(String args[]) {
String s = "america";
int len = s.length();
char[] c = s.toCharArray();
int ct = 0;
for (int i = 0; i < len; i++) {
ct = 1;
for (int j = i + 1; j < len; j++) {
if (c[i] == ' ')
...
0
Envision.js, which makes use of flotr2, seems like a decent choice, especially if you have to support IE 8. Granted, the documentation is a bit sparse, but the timeline and finance charts are a nice piece of work.
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