当前位置首页短片《正在播放宾馆少妇高潮大叫》

《正在播放宾馆少妇高潮大叫》

类型:剧情 喜剧 武侠 马来西亚 2014 

主演:Francesca Xuereb Patrick Kirton 蒂莫西 

导演:海涛 

剧情简介

在Altera SoC DE1板卡上跑完整的卷积神经网络

这次为大家详(🐛)细展示一个(🥇)利用卷积神经网络实现图片自动分类的例程。

神经网络的优点(🧖):自动从数据中学习经验知识,无需复杂的模型和算法。

缺点:有监督学习(🛂),需要大量(⬇)的带标签数据;参数量太少时容易过(🙋)拟合,泛化能(😫)力差,参数量太大时训练收敛很慢(有可能需要几个月到几年)。

为了克服上述缺点,人们发掘了各种计算资(🤘)源,包括(🍺)多核CPU、GPU、(🎏)DSP、ASIC、FPGA,甚至使用模拟电路。

使用CPU实现卷积神经网络比较方便调试,但性能太差,一般(💭)人们都选用更快的GPU实现。目前开源的框架大多都支持GPU,如(🐫)伯克利大学Caffe和Google Convnet。

微(😓)软在2015年2月宣布(📉)使用(🐙)Stratix V完成了CNN加速器,处理 CIFAR10 图片速度可达(🛺)每秒(😴)2300多张。

这里我们也使用CIFAR10图片数据,在Cyclone V板子上跑一个卷积神经(🍼)网络CNN demo。由于板子上计算资源太少(DSP Slice只有80多个)(🗑),实现完整的网络不太现实,只能在FPGA上实现基本计算单元,然后(🍛)由HPS统一调度。性能预期不会太高,后面给出。

CIFAR10图片都是什么呢(🚢)?先来张图!

有兴趣(🐂)的朋友(🤛)可以到官网下载(CIFAR10官网(🏪))。上面提(🈸)到过,CNN是有监督学习系统(🚕),需要大量带label的数据,CIFAR10就是这样一个开放的数据库,提供了60000张不同类别的图片(🍘),分为10个类(如上图左侧所(🛬)示),每个类别有600张图。这个数据集不算特别大,适合在嵌入式平台上实现。而更大的数据集有ImageNet-1000(ImageNet官网),拥有120多万张高清无码大图,我下载到硬(🌬)盘,占用了近200GB空间(只能忍痛将其他rmvb和avi删掉了)!

有朋友会问,不用这些数据行不行,我们(🍚)的智能手机里面照片能不能用于CNN做训练(♎)?

答案是可以的,只是你的数据集很不“均匀”,采样不够“完备”,训练出的模型(🔗)是真实模型的“有偏估计”,而上述两个数据(🍗)集经过了种种考验,已经是学术界公认的优质数据集,一年一度的ILSVRC比赛就采用了这些数据集。

说(⛰)完数据,再说模型。先来看一(♈)张经典的CNN结构:

这是世界上第一个将CNN实用化的例(🕌)子,实现了手写体字母自动识别(🌴)。在这个CNN模型中,可以看到输入是一张32 x 32的二维图像,经过卷积层(Convolution)、下采样层(Subsampling,也称Pooling)、全连接层(Full Connection,也称Inner Product)后,得到(📈)一组概率密度,我们选其中概率最大的元素作为该模型对输(🌡)入图像的分类结果。所以实现CNN时,只需要实现三种基本算法:(🕺)卷(🚛)积、下采样、矩阵乘。除此之外,每层输出都可选择是否经过非(🤭)线性变换,常用的非线性变换有ReLU和(🚴)Sigmoid,前者计算较为简(🐩)单,使用较为广泛。

Caffe框架中提供(❎)了专门为cifar10数据定制的模型,是用proto格式写的,我们的demo也基于这个模型。内容(🐷)如(🎺)下:

name: "CIFAR10_quick_test"input: "data"input_dim: 1input_dim: 3input_dim: 32input_dim: 32layers {name: "conv1"type: CONVOLUTIONbottom: "data"top: "conv1"blobs_lr: 1blobs_lr: 2convolution_param {num_output: 32pad: 2kernel_size: 5stride: 1}}layers {name: "pool1"type: POOLINGbottom: "conv1"top: "pool1"pooling_param {pool: MAXkernel_size: 3stride: 2}}layers {name: "relu1"type: RELUbottom: "pool1"top: "pool1"}layers {name: "conv2"type: CONVOLUTIONbottom: "pool1"top: "conv2"blobs_lr: 1blobs_lr: 2convolution_param {num_output: 32pad: 2kernel_size: 5stride: 1}}layers {name: "relu2"type: RELUbottom: "conv2"top: "conv2"}layers {name: "pool2"type: POOLINGbottom: "conv2"top: "pool2"pooling_param {pool: AVEkernel_size: 3stride: 2}}layers {name: "conv3"type: CONVOLUTIONbottom: "pool2"top: "conv3"blobs_lr: 1blobs_lr: 2convolution_param {num_output: 64pad: 2kernel_size: 5stride: 1}}layers {name: "relu3"type: RELUbottom: "conv3"top: "conv3"}layers {name: "pool3"type: POOLINGbottom: "conv3"top: "pool3"pooling_param {pool: AVEkernel_size: 3stride: 2}}layers {name: "ip1"type: INNER_PRODUCTbottom: "pool3"top: "ip1"blobs_lr: 1blobs_lr: 2inner_product_param {num_output: 64}}layers {name: "ip2"type: INNER_PRODUCTbottom: "ip1"top: "ip2"blobs_lr: 1blobs_lr: 2inner_product_param {num_output: 10}}layers {name: "prob"type: SOFTMAXbottom: "ip2"top: "prob"}

复制代码

可见,上述模型经过了3个卷积层(conv1, conv2, conv3),每个卷积层后面都跟着下采样层(pool1, pool2, pool3),之后(🤐)有两个全连接层(ip1, ip2),最后一层prob为SOFTMAX分类层,是计算概率密度的,这里我们不需要关心。

下面三张图分别统计了CNN模型各层的参数量、数据量和计算量。

可以看出,卷积层的参(🕎)数量很少,但数据量很大;全连接(✅)层刚好相反,参数量较大,但数据量很少。

通(✔)过计(🎎)算量统计发现conv2计算量最大,其次是conv3和conv1。全连接层的计算量相对卷积层较小,但不可忽略。其他层(pool1, pool2以及各级relu)(🦃)由于计算量太小,本设计中没有将其实现为Open CL kernel,而是直接CPU端实(💧)现。

综上所述,我们重点实(🏄)现两(🎓)个算法:卷积和矩阵乘,分别对应卷积层、全连接层的实现。

在DE1-SOC上我利用(🕑)了友晶提供的Open CL BSP,支持C语言开发FPGA。

卷积层计算kernel函数如下:

__attribute__((num_compute_units(4)))__kernelvoid conv(__global float * a, __global float * b, __global float * c, const int M, const int N, const int K){int gx = get_global_id(0);int gy = get_global_id(1);float tmp=0.0f;for(int x = 0; x < K; x ++){for(int y = 0; y < K; y ++){tmp += a[(gx + x) * M + (gy + y)] * b[x * K + y];}}

复制代码

全(🍻)连接层计算采用矩阵乘实现,kernel函数如下:

__attribute__((num_compute_units(4)))__kernelvoid gemm(__global float * a, __global float * b, __global float * c, const int M, const int N, const int K){int gx = get_global_id(0);int gy = get_global_id(1);int sy = get_global_size(1);int sx = get_global_size(0);int s = sx * sy;for(int x = gx; x < M; x += sx){for(int y = gy; y < N; y += sy){float tmp=0.0f;for(int z = 0; z < K; z++){tmp += a[z * M + x] * b[y * K + z];}c[y * M + x] = tmp;}}}

复(🛹)制代码

编译kernel函数需要使用Altera SDK for OpenCL,我用的版本是14.0.0.200,申请了两个(🚮)月的license。编译使用命令行aoc,得到*.aocx文件。

Open CL编译(💦)输出报告中给出了(🏃)资源占用情况:

+--------------------------------------------------------------------+; Estimated Resource Usage Summary ;+----------------------------------------+---------------------------+; Resource + Usage ;+----------------------------------------+---------------------------+; Logic utilization ; 83% ;; Dedicated logic registers ; 46% ;; Memory blocks ; 57% ;; DSP blocks ; 25% ;+----------------------------------------+---------------------------;

复制代码

可见,逻辑资源、(🐳)存储器资源消耗较为明显,而DSP资源并未用尽(🏃),说明(😢)还(🆕)有优化的(📄)空间。

编译主程序需要使用SoCEDS,我用的版本为14.0.2.274,也(🎫)是命令(🚞)行方式,在工程目录下执行make,结束后得到可执行文件cnn。

将这两个文(🥟)件拷贝到SD卡,按照前(🍝)面的博客对板子进行设置,将CNN的模型、CIFAR10数据也(🍜)拷贝到SD卡中,板子上电,mount SD卡(✖)到/mnt,执行cnn,得到(📣)输出如下:(〰)

<div class="blockcode"><blockquote>Please input the number of images(1~100):100Loading data...OK!Constructing CNN...OK!Begin calculation...Elapsed Time = 141.861 s.Real Label = 3(cat), Calc Label = 3(cat), error count = 0Real Label = 8(ship), Calc Label = 8(ship), error count = 0Real Label = 8(ship), Calc Label = 8(ship), error count = 0Real Label = 0(airplane), Calc Label = 0(airplane), error count = 0Real Label = 6(frog), Calc Label = 6(frog), error count = 0Real Label = 6(frog), Calc Label = 6(frog), error count = 0Real Label = 1(automobile), Calc Label = 1(automobile), error count = 0Real Label = 6(frog), Calc Label = 6(frog), error count = 0Real Label = 3(cat), Calc Label = 3(cat), error count = 0Real Label = 1(automobile), Calc Label = 1(automobile), error count = 0Real Label = 0(airplane), Calc Label = 0(airplane), error count = 0Real Label = 9(truck), Calc Label = 9(truck), error count = 0Real Label = 5(dog), Calc Label = 5(dog), error count = 0Real Label = 7(horse), Calc Label = 7(horse), error count = 0Real Label = 9(truck), Calc Label = 9(truck), error count = 0Real Label = 8(ship), Calc Label = 8(ship), error count = 0Real Label = 5(dog), Calc Label = 5(dog), error count = 0Real Label = 7(horse), Calc Label = 7(horse), error count = 0Real Label = 8(ship), Calc Label = 8(ship), error count = 0Real Label = 6(frog), Calc Label = 6(frog), error count = 0Real Label = 7(horse), Calc Label = 7(horse), error count = 0Real Label = 0(airplane), Calc Label = 2(bird), error count = 1Real Label = 4(deer), Calc Label = 4(deer), error count = 1Real Label = 9(truck), Calc Label = 9(truck), error count = 1Real Label = 5(dog), Calc Label = 4(deer), error count = 2Real Label = 2(bird), Calc Label = 3(cat), error count = 3Real Label = 4(deer), Calc Label = 4(deer), error count = 3Real Label = 0(airplane), Calc Label = 0(airplane), error count = 3Real Label = 9(truck), Calc Label = 9(truck), error count = 3Real Label = 6(frog), Calc Label = 6(frog), error count = 3Real Label = 6(frog), Calc Label = 6(frog), error count = 3Real Label = 5(dog), Calc Label = 5(dog), error count = 3Real Label = 4(deer), Calc Label = 4(deer), error count = 3Real Label = 5(dog), Calc Label = 5(dog), error count = 3Real Label = 9(truck), Calc Label = 9(truck), error count = 3Real Label = 2(bird), Calc Label = 3(cat), error count = 4Real Label = 4(deer), Calc Label = 7(horse), error count = 5Real Label = 1(automobile), Calc Label = 9(truck), error count = 6Real Label = 9(truck), Calc Label = 9(truck), error count = 6Real Label = 5(dog), Calc Label = 5(dog), error count = 6Real Label = 4(deer), Calc Label = 4(deer), error count = 6Real Label = 6(frog), Calc Label = 6(frog), error count = 6Real Label = 5(dog), Calc Label = 5(dog), error count = 6Real Label = 6(frog), Calc Label = 6(frog), error count = 6Real Label = 0(airplane), Calc Label = 0(airplane), error count = 6Real Label = 9(truck), Calc Label = 9(truck), error count = 6Real Label = 3(cat), Calc Label = 5(dog), error count = 7Real Label = 9(truck), Calc Label = 9(truck), error count = 7Real Label = 7(horse), Calc Label = 7(horse), error count = 7Real Label = 6(frog), Calc Label = 6(frog), error count = 7Real Label = 9(truck), Calc Label = 9(truck), error count = 7Real Label = 8(ship), Calc Label = 8(ship), error count = 7Real Label = 0(airplane), Calc Label = 2(bird), error count = 8Real Label = 3(cat), Calc Label = 3(cat), error count = 8Real Label = 8(ship), Calc Label = 8(ship), error count = 8Real Label = 8(ship), Calc Label = 8(ship), error count = 8Real Label = 7(horse), Calc Label = 7(horse), error count = 8Real Label = 7(horse), Calc Label = 7(horse), error count = 8Real Label = 4(deer), Calc Label = 3(cat), error count = 9Real Label = 6(frog), Calc Label = 3(cat), error count = 10Real Label = 7(horse), Calc Label = 7(horse), error count = 10Real Label = 3(cat), Calc Label = 5(dog), error count = 11Real Label = 6(frog), Calc Label = 6(frog), error count = 11Real Label = 3(cat), Calc Label = 3(cat), error count = 11Real Label = 6(frog), Calc Label = 6(frog), error count = 11Real Label = 2(bird), Calc Label = 2(bird), error count = 11Real Label = 1(automobile), Calc Label = 1(automobile), error count = 11Real Label = 2(bird), Calc Label = 2(bird), error count = 11Real Label = 3(cat), Calc Label = 3(cat), error count = 11Real Label = 7(horse), Calc Label = 9(truck), error count = 12Real Label = 2(bird), Calc Label = 2(bird), error count = 12Real Label = 6(frog), Calc Label = 6(frog), error count = 12Real Label = 8(ship), Calc Label = 8(ship), error count = 12Real Label = 8(ship), Calc Label = 8(ship), error count = 12Real Label = 0(airplane), Calc Label = 0(airplane), error count = 12Real Label = 2(bird), Calc Label = 2(bird), error count = 12Real Label = 9(truck), Calc Label = 0(airplane), error count = 13Real Label = 3(cat), Calc Label = 3(cat), error count = 13Real Label = 3(cat), Calc Label = 2(bird), error count = 14Real Label = 8(ship), Calc Label = 8(ship), error count = 14Real Label = 8(ship), Calc Label = 8(ship), error count = 14Real Label = 1(automobile), Calc Label = 1(automobile), error count = 14Real Label = 1(automobile), Calc Label = 1(automobile), error count = 14Real Label = 7(horse), Calc Label = 7(horse), error count = 14Real Label = 2(bird), Calc Label = 2(bird), error count = 14Real Label = 5(dog), Calc Label = 7(horse), error count = 15Real Label = 2(bird), Calc Label = 2(bird), error count = 15Real Label = 7(horse), Calc Label = 7(horse), error count = 15Real Label = 8(ship), Calc Label = 8(ship), error count = 15Real Label = 9(truck), Calc Label = 9(truck), error count = 15Real Label = 0(airplane), Calc Label = 0(airplane), error count = 15Real Label = 3(cat), Calc Label = 4(deer), error count = 16Real Label = 8(ship), Calc Label = 8(ship), error count = 16Real Label = 6(frog), Calc Label = 6(frog), error count = 16Real Label = 4(deer), Calc Label = 4(deer), error count = 16Real Label = 6(frog), Calc Label = 6(frog), error count = 16Real Label = 6(frog), Calc Label = 6(frog), error count = 16Real Label = 0(airplane), Calc Label = 2(bird), error count = 17Real Label = 0(airplane), Calc Label = 0(airplane), error count = 17Real Label = 7(horse), Calc Label = 7(horse), error count = 17Classify Score = 83 %.

上面的执行流程是这样的,首先输入测试样本数目(1到100),由于DE1板子FPGA端SDRAM容量较小,难以加载全部测试数据((📟)10000张图(🐲)片),故每次最多装入100张图片。之后载入数据到HPS内存,然后开始构建CNN模型,构建过程中也实现了Open CL的初始化。构建完毕,将输入图像依次通过CNN,得到一系列分(🌃)类结果,与标(👲)签进行对比,统计错误分类个数,计算分类准确率。

经过测试,分类准确率达到83%,与Caffe测试结果一致。

经过以上测试,可以得(📮)到结论:

(1)使用Open CL可(🔋)以很方便地移植高级语言编写的算法;

(2)CNN在移植过程中需要考虑实际硬件,定制合适的模型和数据;

(3)Cyclone 5逻辑资源较少(85K,Open CL kernel占用了83%),如果希望进一步(🌤)提高计算速度,一方面可以选用高性能器件((🤧)如Stratix V、Arria 10),另一方面可以使用RTL自己搭建计算系(📵)统。

以上图文内容均是EEWORLD论坛网友(🧜)zhaoyongke原创,在此感谢。

欢迎微博@EEWORLD

如果(🍮)你也写过此类原创干货请关注微信订阅号(ID:eeworldbbs,将你的原创发至:bbs_service@eeworld.com.cn,一经入选,我们将帮你登上头条!

与更多行业内网友进行交流请登陆EEWORLD论坛。

【正在播放宾馆少妇高潮大叫的相关新闻】

猜你喜欢

💟相关问题

1.请问哪个网站可以免费在线观看动漫《正在播放宾馆少妇高潮大叫》?

优酷视频网友:http://www.ahxhhy.com/video/494771225356.html

2.《正在播放宾馆少妇高潮大叫》是什么时候上映/什么时候开播的?

腾讯视频网友:上映时间为2022年,详细日期可以去百度百科查一查。

3.《正在播放宾馆少妇高潮大叫》是哪些演员主演的?

爱奇艺网友:正在播放宾馆少妇高潮大叫演员表有,导演是。

4.动漫《正在播放宾馆少妇高潮大叫》一共多少集?

电影吧网友:目前已更新到全集已完结

5.手机免费在线点播《正在播放宾馆少妇高潮大叫》有哪些网站?

手机电影网网友:美剧网、腾讯视频、电影网

6.《正在播放宾馆少妇高潮大叫》评价怎么样?

百度最佳答案:《正在播放宾馆少妇高潮大叫》口碑不错,演员阵容强大演技炸裂,并且演员的演技一直在线,全程无尿点。你也可以登录百度问答获得更多评价。

  • 正在播放宾馆少妇高潮大叫百度百科 正在播放宾馆少妇高潮大叫版原著 正在播放宾馆少妇高潮大叫什么时候播 正在播放宾馆少妇高潮大叫在线免费观看 正在播放宾馆少妇高潮大叫演员表 正在播放宾馆少妇高潮大叫大结局 正在播放宾馆少妇高潮大叫说的是什么 正在播放宾馆少妇高潮大叫图片 在线正在播放宾馆少妇高潮大叫好看吗 正在播放宾馆少妇高潮大叫剧情介绍      正在播放宾馆少妇高潮大叫角色介绍 正在播放宾馆少妇高潮大叫上映时间 
  • Copyright © 2008-2024