Image Processing Toolbox Supported Functions

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1 Function Image Processing Toolbox Supported Functions Generates standalone C code (any target) Generates standalone C code using platformspecific shared library (applies when hardware is set to 'MATLAB Host Computer') Supports MATLAB function block Requires dynamic memory allocation support Requires enabling variable sizing support Comments/limitations affine2d 14a NA Yes bwareaopen 15b NA Yes Yes bwdist 14b Yes bweuler 15a 15a Yes Yes bwlabel 15a NA Yes Yes bwlookup 14b 12b Yes Yes bwmorph 14b 12b * bwpack 14a Yes bwperim 15a 15a Yes Yes bwselect 15a 14a Yes Yes bwtraceboundary 14b NA Yes Yes bwunpack 14a Yes* * * * Dynamic memory M is a compile-time conndef 13a NA Yes edge 15a 14a Yes* * Yes * Dynamic memory THRESH and SIGMA are compile-time constants. fitgeotrans 14b NA Yes fspecial Pre-12b% NA Yes* * Yes * Dynamic memory HSIZE, RADIUS, LEN and THETA are compile-time constants. Prior to 14b, this function generated constant-folded C code. In 14b, the function

2 started generating C code. getrangefromclass 14a NA Yes grayconnected histeq 15b 14b Yes* * * * Dynamic memory allocation and variablesizing support are not N is a compile-time hough 15b NA, not * * Dynamic memory allocation support is not that the input image BW has a fixed sized, the value of the RhoResolution optional parameter is a compile-time constant, and the optional Theta vector has a bounded size. houghlines 15b NA Yes Yes houghpeaks 15b NA, not Yes hsv2rgb^ 14b NA Yes im2uint8 15a 14a Yes im2uint16 15b 14a Yes im2int16 15b 14a Yes im2single 14a NA Yes im2double^ 14a NA Yes imabsdiff 15b, not imadjust 15b 14b Yes

3 imbothat 14b 14a Yes Yes imclearborder 15a 14b Yes imclose 14b 14a Yes Yes imcomplement 13a NA Yes imcrop 15b NA, not Yes imdilate 14b 14a Yes Yes imerode 14b 14a Yes Yes imextendedmax 15a 14a Yes Yes imextendedmin 15a 14a Yes Yes imfill 15a 13a * Yes G imfilter 14b 14a Yes Yes imgaborfilt imhist 15a 14a Yes* * * * Both Dynamic memory allocation and variable-sizing support are not required provided N, the number of bins, is a compiletime imhmax 15a 13a Yes Yes imhmin 15a 13a Yes Yes imlincomb 15b 14b Yes immse 15b NA, not imopen 14b 14a Yes Yes imquantize 14b NA Yes imreconstruct 15a 13a Yes Yes imref2d 14a NA Yes imref3d 14a NA Yes Yes imregionalmax 15a 13a Yes Yes imregionalmin 15a 13a Yes Yes imresize 15b NA, not * * *Provided all inputs are constants

4 imrotate 15b 15b, not * Yes * Dynamic memory ANGLE is a compile-time imtophat 14b 14a Yes Yes imtranslate 15b 15b * * Yes * Dynamic memory TRANSLATION is a compile-time, not imwarp 15a 14a Yes * Yes * Dynamic memory TFORM is a compiletime integralboxfilter intlut 15b 14b Yes iptcheckconn 13a NA Yes iptcheckmap 14b NA Yes label2rgb Pre-12b NA Yes mean2 13b NA Yes medfilt2 15a 14b Yes* * Yes * Dynamic memory [M N], the neighborhood size, is a compile-time multithresh 15a 14b Yes* * Yes * Dynamic memory the number of thresholds, N, is a compile-time ordfilt2 15a 14b Yes Yes padarray 13a NA Yes* * * * Both Dynamic memory allocation and variable-sizing support are not required provided PADSIZE is a compile-time

5 projective2d 14a NA Yes psnr 15b NA, not rgb2gray^ 14b Yes rgb2hsv^ 14b Yes rgb2ycbcr 15b 14b Yes regionprops 15a 15a Yes Yes strel 14a NA Yes stretchlim 15a 14b Yes watershed 15a 15a Yes Yes ycbcr2rgb 15b 14b Yes ^ Indicates that the function is in base MATLAB. * Indicates that the function supports a feature provided certain conditions in the Comments/Limitations section are met. % Indicates an enhancement to the generated code.

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