学习在kernel态下使用NEON对算法进行加速的方法

本文跟着小编一起来学习在linux kernel态下如何使用NEON对算法进行加速的技巧,内容通过图文实例给大家做了详细分析,一起来看下。

ARM处理器从cortex系列开始集成NEON处理单元,该单元可以简单理解为协处理器,专门为矩阵运算等算法设计,特别适用于图像、视频、音频处理等场景,应用也很广泛。

本文先对NEON处理单元进行简要介绍,然后介绍如何在内核态下使用NEON,最后列举实例说明。

一.NEON简介

其实最好的资料就是官方文档,Cortex™-A Series Programmer's Guide ,以下描述摘自该文档

1.1 SIMD

NEON采用SIMD架构,single instruction multy data,一条指令处理多个数据,NEON中这多个数据可以很多,而且配置灵活(8bit、16bit、32bit为单位,可多个单位数据),这是优势所在。

如下图,APU需要至少四条指令完成加操作,而NEON只需要1条,考虑到ld和st,节省的指令更多。

 

上述特性,使NEON特别适合处理块数据、图像、视频、音频等。

 1.2 NEON architecture overview

NEON也是load/store架构,寄存器为64bit/128bit,可形成向量化数据,配合若干便于向量操作的指令。

1.2.1 commonality with VFP         1.2.2 data type

 指令中的数据类型表示,例如VMLAL.S8:

1.2.3 registers 

32个64bit寄存器,D0~D31;同时可组成16个128 bit寄存器,Q0~Q15。与VFP公用。

寄存器内部的数据单位为8bit、16bit、32bit,可以根据需要灵活配置。

NEON的指令有Normal,Long,Wide,Narrow和Saturating variants等几种后缀,是根据操作的源src和dst寄存器的类型确定的。

   

1.2.4 instruction set

                     

1.3 NEON 指令分类概述

指令比较多, 详细可参考Cortex™-A Series Programmer's Guide。可大体分为:

NEON general data processing instructions   NEON shift instructions  NEON logical and compare operations  NEON arithmetic instructions NEON multiply instructions  NEON load and store element and structure instructions B.8 NEON and VFP pseudo-instructions

简单罗列一下各指令

                

                  

                

  

无循环左移,负数左移按右移处理。

load和store指令不太好理解,说明一下。

  

1.4 NEON 使用方式      

1.4.1 NEON使用方式

NEON有若干种使用方式:

C语言被编译器自动向量化,需要增加编译选项,且C语言编码时有若干注意事项。这种方式不确定性太大,没啥实用价值   NEON汇编,可行,汇编稍微复杂一点,但是核心算法还是值得的   intrinsics,gcc和armcc等编译器提供了若干与NEON对应的inline函数,可直接在C语言里调用,这些函数反汇编时会直接编程响应的NEON指令。这种方式比较实用与C语言环境,且相对简单。本文后续使用这种方式进行详细说明。          1.4.2  C语言NEON数据类型

需包含arm_neon.h头文件,该头文件在gcc目录里。都是向量数据。

typedef __builtin_neon_qi int8x8_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_hi int16x4_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_si int32x2_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_di int64x1_t;

typedef __builtin_neon_sf float32x2_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_poly8 poly8x8_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_poly16 poly16x4_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_uqi uint8x8_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_uhi uint16x4_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_usi uint32x2_t __attribute__ ((__vector_size__ (8)));

typedef __builtin_neon_udi uint64x1_t;

typedef __builtin_neon_qi int8x16_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_hi int16x8_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_si int32x4_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_di int64x2_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_sf float32x4_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_poly8 poly8x16_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_poly16 poly16x8_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_uqi uint8x16_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_uhi uint16x8_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_usi uint32x4_t __attribute__ ((__vector_size__ (16)));

typedef __builtin_neon_udi uint64x2_t __attribute__ ((__vector_size__ (16)));

typedef float float32_t;

typedef __builtin_neon_poly8 poly8_t;

typedef __builtin_neon_poly16 poly16_t;

typedef struct int8x8x2_t

{

int8x8_t val[2];

} int8x8x2_t;

typedef struct int8x16x2_t

{

int8x16_t val[2];

} int8x16x2_t;

typedef struct int16x4x2_t

{

int16x4_t val[2];

} int16x4x2_t;

typedef struct int16x8x2_t

{

int16x8_t val[2];

} int16x8x2_t;

typedef struct int32x2x2_t

{

int32x2_t val[2];

} int32x2x2_t;

typedef struct int32x4x2_t

{

int32x4_t val[2];

} int32x4x2_t;

typedef struct int64x1x2_t

{

int64x1_t val[2];

} int64x1x2_t;

typedef struct int64x2x2_t

{

int64x2_t val[2];

} int64x2x2_t;

typedef struct uint8x8x2_t

{

uint8x8_t val[2];

} uint8x8x2_t;

typedef struct uint8x16x2_t

{

uint8x16_t val[2];

} uint8x16x2_t;

typedef struct uint16x4x2_t

{

uint16x4_t val[2];

} uint16x4x2_t;

typedef struct uint16x8x2_t

{

uint16x8_t val[2];

} uint16x8x2_t;

typedef struct uint32x2x2_t

{

uint32x2_t val[2];

} uint32x2x2_t;

typedef struct uint32x4x2_t

{

uint32x4_t val[2];

} uint32x4x2_t;

typedef struct uint64x1x2_t

{

uint64x1_t val[2];

} uint64x1x2_t;

typedef struct uint64x2x2_t

{

uint64x2_t val[2];

} uint64x2x2_t;

typedef struct float32x2x2_t

{

float32x2_t val[2];

} float32x2x2_t;

typedef struct float32x4x2_t

{

float32x4_t val[2];

} float32x4x2_t;

typedef struct poly8x8x2_t

{

poly8x8_t val[2];

} poly8x8x2_t;

typedef struct poly8x16x2_t

{

poly8x16_t val[2];

} poly8x16x2_t;

typedef struct poly16x4x2_t

{

poly16x4_t val[2];

} poly16x4x2_t;

typedef struct poly16x8x2_t

{

poly16x8_t val[2];

} poly16x8x2_t;

typedef struct int8x8x3_t

{

int8x8_t val[3];

} int8x8x3_t;

typedef struct int8x16x3_t

{

int8x16_t val[3];

} int8x16x3_t;

typedef struct int16x4x3_t

{

int16x4_t val[3];

} int16x4x3_t;

typedef struct int16x8x3_t

{

int16x8_t val[3];

} int16x8x3_t;

typedef struct int32x2x3_t

{

int32x2_t val[3];

} int32x2x3_t;

typedef struct int32x4x3_t

{

int32x4_t val[3];

} int32x4x3_t;

typedef struct int64x1x3_t

{

int64x1_t val[3];

} int64x1x3_t;

typedef struct int64x2x3_t

{

int64x2_t val[3];

} int64x2x3_t;

typedef struct uint8x8x3_t

{

uint8x8_t val[3];

} uint8x8x3_t;

typedef struct uint8x16x3_t

{

uint8x16_t val[3];

} uint8x16x3_t;

typedef struct uint16x4x3_t

{

uint16x4_t val[3];

} uint16x4x3_t;

typedef struct uint16x8x3_t

{

uint16x8_t val[3];

} uint16x8x3_t;

typedef struct uint32x2x3_t

{

uint32x2_t val[3];

} uint32x2x3_t;

typedef struct uint32x4x3_t

{

uint32x4_t val[3];

} uint32x4x3_t;

typedef struct uint64x1x3_t

{

uint64x1_t val[3];

} uint64x1x3_t;

typedef struct uint64x2x3_t

{

uint64x2_t val[3];

} uint64x2x3_t;

typedef struct float32x2x3_t

{

float32x2_t val[3];

} float32x2x3_t;

typedef struct float32x4x3_t

{

float32x4_t val[3];

} float32x4x3_t;

typedef struct poly8x8x3_t

{

poly8x8_t val[3];

} poly8x8x3_t;

typedef struct poly8x16x3_t

{

poly8x16_t val[3];

} poly8x16x3_t;

typedef struct poly16x4x3_t

{

poly16x4_t val[3];

} poly16x4x3_t;

typedef struct poly16x8x3_t

{

poly16x8_t val[3];

} poly16x8x3_t;

typedef struct int8x8x4_t

{

int8x8_t val[4];

} int8x8x4_t;

typedef struct int8x16x4_t

{

int8x16_t val[4];

} int8x16x4_t;

typedef struct int16x4x4_t

{

int16x4_t val[4];

} int16x4x4_t;

typedef struct int16x8x4_t

{

int16x8_t val[4];

} int16x8x4_t;

typedef struct int32x2x4_t

{

int32x2_t val[4];

} int32x2x4_t;

typedef struct int32x4x4_t

{

int32x4_t val[4];

} int32x4x4_t;

typedef struct int64x1x4_t

{

int64x1_t val[4];

} int64x1x4_t;

typedef struct int64x2x4_t

{

int64x2_t val[4];

} int64x2x4_t;

typedef struct uint8x8x4_t

{

uint8x8_t val[4];

} uint8x8x4_t;

typedef struct uint8x16x4_t

{

uint8x16_t val[4];

} uint8x16x4_t;

typedef struct uint16x4x4_t

{

uint16x4_t val[4];

} uint16x4x4_t;

typedef struct uint16x8x4_t

{

uint16x8_t val[4];

} uint16x8x4_t;

typedef struct uint32x2x4_t

{

uint32x2_t val[4];

} uint32x2x4_t;

typedef struct uint32x4x4_t

{

uint32x4_t val[4];

} uint32x4x4_t;

typedef struct uint64x1x4_t

{

uint64x1_t val[4];

} uint64x1x4_t;

typedef struct uint64x2x4_t

{

uint64x2_t val[4];

} uint64x2x4_t;

typedef struct float32x2x4_t

{

float32x2_t val[4];

} float32x2x4_t;

typedef struct float32x4x4_t

{

float32x4_t val[4];

} float32x4x4_t;

typedef struct poly8x8x4_t

{

poly8x8_t val[4];

} poly8x8x4_t;

typedef struct poly8x16x4_t

{

poly8x16_t val[4];

} poly8x16x4_t;

typedef struct poly16x4x4_t

{

poly16x4_t val[4];

} poly16x4x4_t;

typedef struct poly16x8x4_t

{

poly16x8_t val[4];

} poly16x8x4_t;

 1.4.3  gcc的NEON函数

跟NEON指令对应,详见gcc手册。

 二.内核状态下使用NEON的规则

在linux里,应用态可以比较方便使用NEON instrinsic,增加头arm_neon.h头文件后直接使用。但是内核态下使用NEON有较多限制,在linux内核文档  /Documentation/arm/kernel_mode_neon.txt对此有详细说明。要点为:

 还有一点特别关键:

CC [M] /work/platform-zynq/drivers/zynq_fpga_driver/mmi_neon/lcd_hw_fs8812_neon.o

In file included from /home/liuwanpeng/lin/lib/gcc/arm-xilinx-linux-gnueabi/4.8.3/include/arm_neon.h:39:0,

from /work/platform-zynq/drivers/zynq_fpga_driver/mmi_neon/lcd_hw_fs8812_neon.c:8:

/home/liuwanpeng/lin/lib/gcc/arm-xilinx-linux-gnueabi/4.8.3/include/stdint.h:9:26: error: no include path in which to search for stdint.h

# include_next <stdint.h>

没有使用-ffreestanding编译选项时,在内核态下使用出现此编译错误。

 三.实例

NEON一般在图像等领域,最小处理单位就是8bit,而不是1bit,这方便的例子非常多,本文就不说明了。在实际项目中,我需要对液晶的一组数据按位操作,变换,形成新的数据,如果用传统ARM指令,掩码、移位、循环,想想效率就非常低。于是决定使用NEON的位相关指令完成上述任务。

3.1 任务说明

如下图,需要对各个bit进行转换,组成新的数据。

 

3.2 算法说明

使用vmsk、vshl、vadd等位操作完成。

3.3 kernel配置

必须配置内核支持NEON,否则kernel_neon_begin()和kernel_neon_end()等函数不会编辑进去。

make menuconfig:Floating point emulation,如下图。

未使能“Support for NEON in kernel mode”时会报错:

mmi_module_amp: Unknown symbol kernel_neon_begin (err 0)

mmi_module_amp: Unknown symbol kernel_neon_end (err 0)

3.4 模块代码

由于NEON代码需要单独设置编译选项,所以单独建立了一个内核模块,makefile如下:

CFLAGS_MODULE += -O3 -mfpu=neon -mfloat-abi=softfp -ffreestanding 

核心代码:

#include <linux/module.h>

#include <linux/printk.h>

#include <arm_neon.h>  // 来自GCC的头文件,必须用-ffreestanding编译选徐昂

#define LCD_8812_ROW_BYTES 16

#define LCD_8812_PAGE_ROWS 8

#define LCD_PAGE_BYTES (LCD_8812_ROW_BYTES*LCD_8812_PAGE_ROWS)

int fs8812_cvt_buf( uint8 * dst, uint8 * src )

{

uint8x16_t V_src[8];

uint8x16_t V_tmp[8];

uint8x16_t V_dst[8];

uint8x16_t V_msk;

int8x16_t V_shift;

int8 RSHL_bits[8] = {0,1,2,3,4,5,6,7};

int8 row,bit;

uint8 page;

uint8 * fb_page_x = NULL;

// convert the frame_buf for fs8812

for( page=0;page<4;page++ ){

fb_page_x = src + page*LCD_PAGE_BYTES;

for( row=0;row<LCD_8812_PAGE_ROWS;row++ )

V_src[row] = vld1q_u8( fb_page_x + row*LCD_8812_ROW_BYTES );

       for( bit=0;bit<8;bit++){

  V_msk = vdupq_n_u8(1<<bit);

  for( row=0;row<LCD_8812_PAGE_ROWS;row++){

  V_tmp[row] = vandq_u8(V_src[row],V_msk); // only process the desire bit

  V_shift = vdupq_n_s8( RSHL_bits[row]-bit );

  V_tmp[row] = vshlq_u8( V_tmp[row],V_shift );

  }

  V_dst[bit] = vorrq_u8(V_tmp[0],V_tmp[1]); // all bit_x convert to one row

  V_dst[bit] |= vorrq_u8(V_tmp[2],V_tmp[3]);

  V_dst[bit] |= vorrq_u8(V_tmp[4],V_tmp[5]);

  V_dst[bit] |= vorrq_u8(V_tmp[6],V_tmp[7]);

  }

  // store to ram

  fb_page_x = dst + page*LCD_PAGE_BYTES;

  for( row=0;row<LCD_8812_PAGE_ROWS;row++ ){

   vst1q_u8(fb_page_x,V_dst[row]);

  fb_page_x += LCD_8812_ROW_BYTES;

  }

}

  return 0;

}

EXPORT_SYMBOL_GPL(fs8812_cvt_buf);

调用模块,务必没有“-mfpu=neon -mfloat-abi=softfp ”选项

// convert the frame_buf for fs8812

kernel_neon_begin();

fs8812_cvt_buf( g_tmp_buf, frame_buf );

kernel_neon_end();

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