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4

geom_histogram() uses stat_bin() to divide your data in bins. Default value for stat_bin() is right=FALSE that means that class start with value including and end with value not including this value, for example, class 0.9-1 will include 0.9 but won't include 1. To change this to oposite direction just add right=TRUE to geom_histogram(). ...


3

It is possible to color both the bars and their borders independently. But for that you need to know how many of those you have ! Here is a proposition, when what you want to do is to single out the first bar on the right to a certain value (here 1.96): set.seed(123) x <- rnorm(100) res.hist <- hist(x, plot=FALSE) n_bars <- length(res.hist$mids) ...


3

How about: x <- c(5,2) table(cut(x = x, breaks = c(-Inf, -1, 0, 1.5, Inf))) This would work too: maxval <- 1.1*max(abs(x)) hist(x = c(.5,2), breaks = c(-maxval, -1, 0, 1.5, maxval), plot=FALSE)$counts This is the original (perfectly sensible) suggestion: hist(x = c(.5,2), breaks = c(-Inf, -1, 0, 1.5, Inf), ...


3

The cause of error is because your image is RGB and imhist does not deal with that. To work around this you can either use a single channel: imhist(YourImage(:,:,Channel)); or convert from RGB to grayscale: imhist(rgb2gray(YourImage)); That should work fine now.


2

Looking at the code for histogramdd it simply uses the parameter bins=10 from the function definition when it's not given. From your link: def histogramdd(sample, bins=10, range=None, normed=False, weights=None):


2

One thing you can do is that you can do the calculation before you draw the graphic. But, if I follow your approach, you would want something like this. ggplot(df, aes(x=x)) + geom_bar(aes(y = N/sum(N)), stat="identity", width=1.0, colour = "dark green", fill = 'paleturquoise4') + ylab("y")


2

The problem is that you are converting x to a factor in the aesthetics call. You can get around this by specifying the "levels" you want beforehand and making sure they don't get dropped (from this question): df$x <- factor(df$x, levels=c(0:25)) p <- ggplot(df, aes(x=x, y=N)) + geom_bar(stat="identity", width=1.0, colour = ...


2

You can do: ct <- cut(a, breaks = c(0, 2, max(a)), include.lowest=TRUE, labels=c("<=2", ">2")) ## [1] <=2 <=2 <=2 <=2 <=2 <=2 <=2 <=2 <=2 >2 <=2 >2 >2 >2 <=2 >2 >2 <=2 ## [19] >2 >2 <=2 <=2 >2 >2 <=2 <=2 <=2 >2 <=2 >2 <=2 <=2 <=2 <=2 ...


1

Minimum peak separation Specify the minimum peak distance, or minimum separation between peaks as a positive integer. You can use the 'MINPEAKDISTANCE' option to specify that the algorithm ignore small peaks that occur in the neighborhood of a larger peak. When you specify a value for 'MINPEAKDISTANCE', the algorithm initially identifies all the ...


1

If you've got noisy data, you may find that instead of one solid peak, you get lots of small ones (see the folowing image). The important data here is when the signal is high and when it is low - you don't care about small variations in value, you only want to use one of those peaks and not look at all the smaller local ones around it. If you know the ...


1

You generate 13 samples and plot 13 boxes at the sample place. Of course you don't see the transparency anymore. Change the first part of your plot command to draw a single box only: plot '+' using (ax+bw/2):($0 == 0 ? ay : 1/0) with boxes lc rgb "green"


1

To increase the spacing between the xtics you must increase the canvas width when setting your terminal: set terminal wxt size 1000,500


1

As you are splitting your vector in two, you can create the groups by applying the inequality statements directly to the vector. To plot the table you can use barplot . set.seed(1) var <- sample(1:10, 100, T) (tab <- table(var<=2)) #FALSE TRUE # 87 13 barplot(tab) Or directly barplot(table(var<=2)) For more categories, the ...


1

The below is for proc univariate rather than proc capability, I do not have access to SAS/QC to test, but the user guide shows very similar syntax for the histogram statements. Hopefully, you'll be able to translate it back. It looks like you are having problems with the colour due to your output system. Your graphs are probably delivered via ODS, in which ...


1

As far as I know, there is no cutting/breaking function in base R that allows you to specify such irregular breaks like that. You could wrap findInterval to do some of the manupulations findInterval2 <- function(x, br, rightmost.closed = FALSE, left.closed=TRUE, trim=FALSE, labels=NULL) { r <- findInterval(x, br, rightmost.closed) ...


1

The normal way to do this is to find your darkest pixel, and your brightest. You can do this in a singe loop iterating over all your pixels, pseudo-code like this: darkest=pixel[0,0] // assume first pixel is darkest for now, and overwrite later brightest=pixel[0,0] // assume first pixel is lightest for now, and overwrite later for all pixels if this ...


1

Can't comment on your code, but it seems to work. Note that the chi-square goodness-of-fit test is designed to work on counts of data falling within each bin. You cannot use it on normalized values, or with any other scaling, in fact. So whatever you show, the chi-square has to be based on the actual counts.


1

The way you're computing the width of the bars is incorrect for your particular use case; in particular it results in negative widths (as the error message indicates). You need to take the width of the range and divide it by the number of items (minus a small number if you want gaps): .attr("width", (x.range()[1] - x.range()[0]) / data.length - 2) ...


1

If you doing histogram equalization you need to first color convert it to a color space with a luminance channel, like Lab, HSV or YCrCb and then only equalize the luminance. If you try equalizing the RGB channels you will get weird color shifts.


1

The main problem of your code is after rgb2hsv(), the format of each pixel is double in [0,1], rather than uint8. So you need to convert back to [0,255] so it can be used as a subscript. The following code will work properly. for i=1:size(GIm,1) for j=1:size(GIm,2) value=floor(GIm(i,j) * 255); % now value is in [0,255] ...


1

I think this is what you are looking for: # Category names my.names <- c("test1","test2","test3") # Example data data <- runif(length(my.names)) # Normalize the example data as a percentage of the total data.norm <- data / sum(data) # Use barplot to plot the results, plot without an x axis x <- barplot(data.norm,names.arg=my.names,xaxt="n") ...


1

$_ is the current element of @list The code can be rewritten as follows: # Enumerate all values in the input list foreach my $value (@list) { # Compute histogram bin into which to place the current value my $bin_index = ceil(($value + 1) / $bin_width) - 1; # Increment the number of values in the bin $histogram{$bin_index}++; }


1

$_ here is used as implicit foreach variable; same thing could be explicitly written as my %histogram; for my $n (@list) { my $key = ceil(($n + 1) / $bin_width) -1; $histogram{$key} += 1; }


1

It is a postfix for loop. Your attempt to print $_ is probably failing because you are putting it outside the loop (but you didn't share your code for that attempt). It could be rewritten as: my %histogram; for my $value (@list) { $histogram{ceil(($value + 1) / $bin_width) -1}++ }



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