转贴ARM NEON 优化的例子
ARM NEON Optimization. An Example
Since there is so little information about NEON optimizations out there I thought I’d write a little about it.
Some weeks ago someone on the beagle-board mailing-list asked how to optimize a color to grayscale conversion for images. I haven’t done much pixel processing with ARM NEON yet, so I gave if a try. The results I got where quite spectacular, but more on this later.
For the color to grayscale conversion I used a very simple conversion scheme: A weighted average of the red, green and blue components. This conversion ignores the effect of gamma but works good enough in practice. Also I decided not to do proper rounding. It’s just an example after all.
First a reference implementation in C:
void reference_convert (uint8_t * __restrict dest, uint8_t * __restrict src, int n)
{
int i;
for (i=0; i<n; i++)
{
int r = *src++; // load red
int g = *src++; // load green
int b = *src++; // load blue
// build weighted average:
int y = (r*77)+(g*151)+(b*28);
// undo the scale by 256 and write to memory:
*dest++ = (y>>8);
}
}
Optimization with NEON Intrinsics
Lets start optimizing the code using the compiler intrinsics. Intrinsics are nice to use because you they behave just like C-functions but compile to a single assembler statement. At least in theory as I’ll show you later..
Since NEON works in 64 or 128 bit registers it’s best to process eight pixels in parallel. That way we can exploit the parallel nature of the SIMD-unit. Here is what I came up with:
void neon_convert (uint8_t * __restrict dest, uint8_t * __restrict src, int n)
{
int i;
uint8x8_t rfac = vdup_n_u8 (77);
uint8x8_t gfac = vdup_n_u8 (151);
uint8x8_t bfac = vdup_n_u8 (28);
n/=8;
for (i=0; i<n; i++)
{
uint16x8_t temp;
uint8x8x3_t rgb = vld3_u8 (src);
uint8x8_t result;
temp = vmull_u8 (rgb.val[0], rfac);
temp = vmlal_u8 (temp,rgb.val[1], gfac);
temp = vmlal_u8 (temp,rgb.val[2], bfac);
result = vshrn_n_u16 (temp, 8);
vst1_u8 (dest, result);
src += 8*3;
dest += 8;
}
}
Lets take a look at it step by step:
First off I load my weight factors into three NEON registers. The vdup.8 instruction does this and also replicates the byte into all 8 bytes of the NEON register.
uint8x8_t rfac = vdup_n_u8 (77);
uint8x8_t gfac = vdup_n_u8 (151);
uint8x8_t bfac = vdup_n_u8 (28);
Now I load 8 pixels at once into three registers.
uint8x8x3_t rgb = vld3_u8 (src);
The vld3.8 instruction is a specialty of the NEON instruction set. With NEON you can not only do loads and stores of multiple registers at once, you can de-interleave the data on the fly as well. Since I expect my pixel data to be interleaved the vld3.8 instruction is a perfect fit for a tight loop.
After the load, I have all the red components of 8 pixels in the first loaded register. The green components end up in the second and blue in the third.
Now calculate the weighted average:
temp = vmull_u8 (rgb.val[0], rfac);
temp = vmlal_u8 (temp,rgb.val[1], gfac);
temp = vmlal_u8 (temp,rgb.val[2], bfac);
vmull.u8 multiplies each byte of the first argument with each corresponding byte of the second argument. Each result becomes a 16 bit unsigned integer, so no overflow can happen. The entire result is returned as a 128 bit NEON register pair.
vmlal.u8 does the same thing as vmull.u8 but also adds the content of another register to the result.
So we end up with just three instructions for weighted average of eight pixels. Nice.
Now it’s time to undo the scaling of the weight factors. To do so I shift each 16 bit result to the right by 8 bits. This equals to a division by 256. ARM NEON has lots of instructions to do the shift, but also a “narrow” variant exists. This one does two things at once: It does the shift and afterwards converts the 16 bit integers back to 8 bit by removing all the high-bytes from the result. We get back from the 128 bit register pair to a single 64 bit register.
result = vshrn_n_u16 (temp, 8);
And finally store the result.
vst1_u8 (dest, result);
First Results:
How does the reference C-function and the NEON optimized version compare? I did a test on my Omap3 CortexA8 CPU on the beagle-board and got the following timings:
C-version: 15.1 cycles per pixel.
NEON-version: 9.9 cycles per pixel.That’s only a speed-up of factor 1.5. I expected much more from the NEON implementation. It processes 8 pixels with just 6 instructions after all. What’s going on here? A look at the assembler output explained it all. Here is the inner-loop part of the convert function:
160: f46a040f vld3.8 {d16-d18}, [sl]
164: e1a0c005 mov ip, r5
168: ecc80b06 vstmia r8, {d16-d18}
16c: e1a04007 mov r4, r7
170: e2866001 add r6, r6, #1 ; 0x1
174: e28aa018 add sl, sl, #24 ; 0x18
178: e8bc000f ldm ip!, {r0, r1, r2, r3}
17c: e15b0006 cmp fp, r6
180: e1a08005 mov r8, r5
184: e8a4000f stmia r4!, {r0, r1, r2, r3}
188: eddd0b06 vldr d16, [sp, #24]
18c: e89c0003 ldm ip, {r0, r1}
190: eddd2b08 vldr d18, [sp, #32]
194: f3c00ca6 vmull.u8 q8, d16, d22
198: f3c208a5 vmlal.u8 q8, d18, d21
19c: e8840003 stm r4, {r0, r1}
1a0: eddd3b0a vldr d19, [sp, #40]
1a4: f3c308a4 vmlal.u8 q8, d19, d20
1a8: f2c80830 vshrn.i16 d16, q8, #8
1ac: f449070f vst1.8 {d16}, [r9]
1b0: e2899008 add r9, r9, #8 ; 0x8
1b4: caffffe9 bgt 160Note the store at offset 168? The compiler decides to write the three registers onto the stack. After a bit of useless memory accesses from the GPP side the compiler reloads them (offset 188, 190 and 1a0) in exactly the same physical NEON register.
What all the ordinary integer instructions do? I have no idea. Lots of memory accesses target the stack for no good reason. There is definitely no shortage of registers anywhere. For reference: I used the GCC 4.3.3 (CodeSourcery 2009q1 lite) compiler .
NEON and assembler
Since the compiler can’t generate good code I wrote the same loop in assembler. In a nutshell I just took the intrinsic based loop and converted the instructions one by one. The loop-control is a bit different, but that’s all.
convert_asm_neon:
# r0: Ptr to destination data
# r1: Ptr to source data
# r2: Iteration count:
push {r4-r5,lr}
lsr r2, r2, #3
# build the three constants:
mov r3, #77
mov r4, #151
mov r5, #28
vdup.8 d3, r3
vdup.8 d4, r4
vdup.8 d5, r5
.loop:
# load 8 pixels:
vld3.8 {d0-d2}, [r1]!
# do the weight average:
vmull.u8 q3, d0, d3
vmlal.u8 q3, d1, d4
vmlal.u8 q3, d2, d5
# shift and store:
vshrn.u16 d6, q3, #8
vst1.8 {d6}, [r0]!
subs r2, r2, #1
bne .loop
pop { r4-r5, pc }
Final Results:
Time for some benchmarking again. How does the hand-written assembler version compares? Well – here are the results:
C-version: 15.1 cycles per pixel.
NEON-version: 9.9 cycles per pixel.
Assembler: 2.0 cycles per pixel.That’s roughly a factor of five over the intrinsic version and 7.5 times faster than my not-so-bad C implementation. And keep in mind: I didn’t even optimized the assembler loop.
My conclusion: If you want performance out of your NEON unit stay away from the intrinsics. They are nice as a prototyping tool. Use them to get your algorithm working and then rewrite the NEON-parts of it in assembler.
Btw: Sorry for the ugly syntax-highlighting. I’m still looking for a nice wordpress plug-in.