Use this command:
convert some_pic.png -verbose info:
(yes, there is a
: at the end of the command)
It is quite verbose. Look for the channels list:
In this example, there are three channels, one for each primary color. But non for alpha. So this image is not transparent.
But you can also get this kind of output:
Here, there is an alpha channel. However, this does no prove that the image is transparent. It just says that it might be. In the outputs of the command, look for the information about alpha channel:
min: 255 (1)
max: 255 (1)
mean: 255 (1)
standard deviation: 0 (0)
In this example, the alpha says that the picture is opaque:
max = 1 (1 = opaque, 0 = transparent). So even if the image has an alpha channel, the user sees an opaque picture.
You can also get this:
min: 95 (0.372549)
max: 212 (0.831373)
mean: 111.187 (0.436028)
standard deviation: 19.5635 (0.0767196)
min = 0.372549. This means that some pixels are partly transparent.
mean is also low. It seems that a large part of the image uses transparency.
Depending of the type of check you want to achieve (full opacity, "almost opaque", etc.), you should check
mean and maybe
standard deviation if your request is a bit tricky.
Note: you might be tempted to check integer values for
mean and others, as I did in the first place. After all, it is easier to deal with
0.372549. If you choose this route, beware the alpha channel depth. If it is 8 bits, then 255 is the maximum and means "opaque". If it is 16 bits, the maximum is now 65535 and 255 means "almost transparent". Better check the floats in parenthesis, which always range from 0 to 1.
If you suspect that a lot of pictures you will process have no alpha channel at all, it might be useful to first run:
identify -format '%[channels]' some_pic.png
If it dumps:
there is an alpha channel (the
a in the output) and
convert should be used to check
min, etc.. But if there isn't, there is no need to run
convert. Although I didn't benchmarked these two commands,
identify should be much faster than