I have a C code which uses doubles. I want to be able to run the code on a DSP (TMS320). But the DSP doesn't support doubles, only fixedpoint numbers. What is the best way to convert the code into fixedpoint? Is there a good C library for fixedpoint numbers (implemented as integers)?
TI provides a fixedpoint library called "IQmath": http://focus.ti.com/lit/sw/sprc990/sprc990.pdf Converting involves analyzing your current code  for each variable you need to know what range it can hold, and what precision it needs. Then you can decide which type to store it in. IQMath provides types from q30 with a range of +/2 and a precision of 0.0000000001 to q1 with a range of ~+/ 1 million and a precision of 0.5. For operations which can possibly overflow the range of the variables, you need to add checks for overflow, and decide how to handle it  pin it at max, store with a different scale, raise an error, etc. There is really no way to convert to fixed point without really gaining a deep understanding of the dataflow of your process. 


The following code defines a type Fixed, using integers as its internal representation. Additions and subtractions are performed simply with the
I was using the above code to represent fractions in my image processing algorithm. It was faster than the version which was using doubles and the results were almost exactly the same. 


Well, there's this library I just found using Google. More likely, though, the PSP for your device should include some sort of math library. It should be documented. You will likely have to rewrite some your code, because the control constructs you use when doing primitivebased floatingpoint arithmetic may not make sense when you use the API provided by your PSP. For example  you might convert this
to this



If the C code uses doubles very seldom/sparsely, then you might be able to use a floating point emulation library without causing your C code to run 10X to 100X slower. If don't want that performance hit and there are a lot of floating point operations, and you know the scale and precision required at every arithmetic and store operation for every realistic input, then you might be able convert each arithmetic operation, manually, to used scaled integer data types and operations. But analyzing precision requirements is, in general, nontrivial for DSP type code. There are many DSP and Numerical Methods textbook chapters on the subject. 


Most DSP toolchains include libraries for floatingpoint emulation in software. This will be slow, but you should initially build your code with floatingpoint support, then profile to see if there are just a few places that you need to convert to fixedpoint to get sufficient performance. You will also need to have the floatingpoint stuff running to provide a comparison as you port to fixedpoint, to make sure you haven't lost anything in the process. 


long
), with a shift implicit in the type. For example, if you have 16 bits after the point (_iq16
), you represent the fixedpoint number 1.0 by the integer 65536 in the underlying type. For adding and subtracting fixed point numbers of the same type you can use the standard integer operations. Multiplication needs an extra shift to correct the scaling. – starblue Jan 9 '14 at 13:44