车牌识别系统MATLAB源代码完整解析.docx

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车牌识别系统MATLAB源代码完整解析.docx

车牌识别系统MATLAB源代码完整解析

clc;clearall;closeall;

[,pathname,filterindex]=uigetfile({'*.jpg;*.tif;*.png;*.gif','AllImageFiles';...

'*.*','AllFiles'},'选择待处理图像',...

'images\01.jpg');

file=full,);%文件路径和文件名创建合成完整文件名

id=Get_Id(得到file中的所有对象

Img=imread(根据路径和文件名读取图片到Img

[Plate,bw,Loc]=Pre_Process(Img);%车牌区域预处理

result=Plate_Process(Plate,id);%车牌区域二值化处理

%寻找连续有文字的块,若长度大于某阈值,则认为该块有两个字符组成,需要分割

bw=Segmation(result);

words=Main_Process(bw);%主流程处理

Write_Mask(words,id);%写出到模板库

str=Pattern_Recognition(words);%识别

functionid=Get_Id(file)

%获取图像id信息

%输入参数:

%file——图像路径

%输出参数:

%id——图像id信息

info=imfinfo(file);

FS=[422227354169293184235413214202...

13093849006112029798686137193...

8055846208699475811062115...

5907252168604575397950223];

id=find(FS==info.);

ifisempty(id)

warndlg('未建立该图像模板库,可能运行出错!

','警告');

id=1;

end

functionR=Cubic_Spline(P)

%三次样条插值

%输入参数:

%P——节点矩阵

%输出参数:

%R——样条节点矩阵

%计算相邻插值点之间的弦长

chordlen=sqrt(sum(diff(P,[],1).^2,2));

%将弦长参数归一化到[0,1]上

chordlen=chordlen/sum(chordlen);

%计算每个插值节点处的累加弦长,作为给点处的参数

cumarc=[0;cumsum(chordlen)];

x=cumarc;

N=size(P,1);

R=[];

%以下部分为一元三次样条插值的程序,对于空间三维数据,以同样的累加

%弦长作为参数,对x,y,z分量做三次一元样条插值得到的结果便是对三维数据

%做三次样条插值

fork=1:

size(P,2)

y=P(:

k);

m=zeros(1,N);

M=zeros(1,N);

n=m;

d=m;

A=eye(N);

A=2*A;

m

(1)=1;

n(N)=1;

m(N)=1;

n

(1)=1;

fori=2:

N-1

m(i)=(x(i+1)-x(i))/(x(i+1)-x(i-1));

n(i)=1-m(i);

d(i)=6*((y(i+1)-y(i))/(x(i+1)-x(i))-(y(i)-y(i-1))/(x(i)-x(i-1)))/(x(i+1)-x(i-1));

end

forj=1:

N-1

A(j,j+1)=m(j);

A(j+1,j)=n(j+1);

end

p=A(2:

N-1,2:

N-1);

q=d(2:

N-1);

Q=inv(p)*q';

M=zeros(1,N);

M(1,1)=0;

M(1,N)=0;

M(1,2:

N-1)=Q;

S=[];

temp=[];

fori=1:

N-1

%对每一个分量计算出来的插值曲线进行采样,以便将其画出。

s=50;%采样点个数

z=linspace(x(i),x(i+1),s);

h=x(i+1)-x(i);

forj=1:

length(z)

S(j)=M(i)*((x(i+1)-z(j))^3)/(6*h)+M(i+1)*((z(j)-x(i))^3)/(6*h)+(y(i)-M(i)*(h^2)/6)*((x(i+1)-z(j))/h)+(y(i+1)-M(i+1)*h^2/6)*((z(j)-x(i))/h);

end

temp=[tempS];

end

R(:

k)=temp;

end

functionmask=Get_PointSplineMask(Img,Ptn)

%获取封闭有序节点的蒙板图像

%Img——图像矩阵

%Ptn——封闭有序节点

%输出参数:

%mask——蒙板图像

ifndims(Img)==3

I=rgb2gray(Img);

else

I=Img;

end

mask=zeros(size(I));

Ptn=Cubic_Spline(Ptn);%样条插值

fori=1:

size(Ptn,1)-1

pt1=Ptn(i,:

);%线段起点

pt2=Ptn(i+1,:

);%线段终点

x1=pt1

(1);y1=pt1

(2);

x2=pt2

(1);y2=pt2

(2);

%直线段参数

A=(y1-y2)/(x1*y2-x2*y1);

B=(-x1+x2)/(x1*y2-x2*y1);

%直线段取点

xk=linspace(min(x1,x2),max(x1,x2));

ifB==0

yk=linspace(min(y1,y2),max(y1,y2));

else

yk=(-1-A*xk)/B;

end

%赋值操作

forj=1:

length(xk)

if~isnan(round(yk(j)))&&~isnan(round(xk(j)))&&...

~isinf(round(yk(j)))&&~isinf(round(xk(j)))&&...

round(yk(j))>0&&round(xk(j))>0

mask(round(yk(j)),round(xk(j)))=1;

end

end

end

mask=logical(mask);%类型转换

mask=bwmorph(mask,'bridge');%桥接操作

mask=imfill(mask,'hole');%补洞操作

functionIm=Image_Rotate(Img,num,flag)

%旋转校正函数

%输入函数:

%Img——图像矩阵

%num——图像序号

%flag——显示图像窗口

%输出函数:

%Im——结果图像

ifnargin<3

flag=0;

end

role=[600-135100100-52-1220-5-2062];

Im=imrotate(Img,role(num),'bilinear');

ifflag

figure

(2);

subplot(1,2,1);imshow(Img);title('原图像');

subplot(1,2,2);imshow(Im);title('旋转图像');

end

functionwords=Main_Process(bw,flag_display)

%主流程处理,分割字符并获取

%输入参数:

%bw——车牌区域图像

%flag_display——显示图像标记

%输出参数:

%words——车牌字符数据

ifnargin<2

flag_display=1;

end

[m,n]=size(bw);

k1=1;

k2=1;

s=sum(bw);%列积分投影

j=1;%列游标

whilej~=n

%寻找车牌图像左侧边界

whiles(j)==0&&j<=n-1

j=j+1;

end

k1=j-1;%车牌图像左侧边界

%寻找车牌图像右侧边界

whiles(j)~=0&&j<=n-1

j=j+1;

end

k2=j-1;%车牌图像右侧边界

Tol=round(n/6.5);%字符区域宽度约束

ifk2-k1>Tol

[val,num]=min(sum(bw(:

[k1+5:

k2-5])));

bw(:

k1+num+5)=0;%抹去该字符

end

end

%再切割

bw=Segmation(bw);

%切割出7个字符

[m,n]=size(bw);

wideTol=round(n/20);%区域宽度最小约束

rateTol=0.25;%中心区域比值约束

flag=0;

word1=[];

whileflag==0

[m,n]=size(bw);

left=1;

wide=0;

%找到空隙位置

whilesum(bw(:

wide+1))~=0

wide=wide+1;

end

ifwide

%认为是左侧干扰

bw(:

1:

wide)=0;%抹去干扰区域

bw=Segmation(bw);

else

%提取字符区域

temp=Segmation(imcrop(bw,[11widem]));

[m,n]=size(temp);

tall=sum(temp(:

));%该字符所有像素之和

%该字符图像2/3图像区域像素和

two_thirds=sum(sum(temp(round(m/3):

2*round(m/3),:

)));

rate=two_thirds/tall;%中间区域像素/全局区域像素

ifrate>rateTol

flag=1;

word1=temp;%提取WORD1

end

bw(:

1:

wide)=0;%抹去已处理的区域

bw=Segmation(bw);

end

end

%分割出第二个字符

[word2,bw]=Word_Segmation(bw);

%分割出第三个字符

[word3,bw]=Word_Segmation(bw);

%分割出第四个字符

[word4,bw]=Word_Segmation(bw);

%分割出第五个字符

[word5,bw]=Word_Segmation(bw);

%分割出第六个字符

[word6,bw]=Word_Segmation(bw);

%分割出第七个字符

[word7,bw]=Word_Segmation(bw);

wid=[size(word1,2)size(word2,2)size(word3,2)...

size(word4,2)size(word5,2)size(word6,2)size(word7,2)];

[maxwid,indmax]=max(wid);

maxwid=maxwid+10;

wordi=word1;

wordi=[zeros(size(wordi,1),round((maxwid-size(word1,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word1,2))/2))];

word1=wordi;

wordi=word2;

wordi=[zeros(size(wordi,1),round((maxwid-size(word2,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word2,2))/2))];

word2=wordi;

wordi=word3;

wordi=[zeros(size(wordi,1),round((maxwid-size(word3,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word3,2))/2))];

word3=wordi;

wordi=word4;

wordi=[zeros(size(wordi,1),round((maxwid-size(word4,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word4,2))/2))];

word4=wordi;

wordi=word5;

wordi=[zeros(size(wordi,1),round((maxwid-size(word5,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word5,2))/2))];

word5=wordi;

wordi=word6;

wordi=[zeros(size(wordi,1),round((maxwid-size(word6,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word6,2))/2))];

word6=wordi;

wordi=word7;

wordi=[zeros(size(wordi,1),round((maxwid-size(word7,2))/2))wordizeros(size(wordi,1),round((maxwid-size(word7,2))/2))];

word7=wordi;

%figure

(1);

%subplot(2,7,1);imshow(word1);title('字符1');

%subplot(2,7,2);imshow(word2);title('字符2');

%subplot(2,7,3);imshow(word3);title('字符3');

%subplot(2,7,4);imshow(word4);title('字符4');

%subplot(2,7,5);imshow(word5);title('字符5');

%subplot(2,7,6);imshow(word6);title('字符6');

%subplot(2,7,7);imshow(word7);title('字符7');

%切割出的字符归一化大小为40*20,此处演示

word11=imresize(word1,[4020]);

word21=imresize(word2,[4020]);

word31=imresize(word3,[4020]);

word41=imresize(word4,[4020]);

word51=imresize(word5,[4020]);

word61=imresize(word6,[4020]);

word71=imresize(word7,[4020]);

%subplot(2,7,8);imshow(word11);title('字符1');

%subplot(2,7,9);imshow(word21);title('字符2');

%subplot(2,7,10);imshow(word31);title('字符3');

%subplot(2,7,11);imshow(word41);title('字符4');

%subplot(2,7,12);imshow(word51);title('字符5');

%subplot(2,7,13);imshow(word61);title('字符6');

%subplot(2,7,14);imshow(word71);title('字符7');

%赋值操作

words.word1=word11;

words.word2=word21;

words.word3=word31;

words.word4=word41;

words.word5=word51;

words.word6=word61;

words.word7=word71;

ifflag_display

figure;

subplot(2,7,1);imshow(word1);title('字符1','FontWeight','Bold');

subplot(2,7,2);imshow(word2);title('字符2','FontWeight','Bold');

subplot(2,7,3);imshow(word3);title('字符3','FontWeight','Bold');

subplot(2,7,4);imshow(word4);title('字符4','FontWeight','Bold');

subplot(2,7,5);imshow(word5);title('字符5','FontWeight','Bold');

subplot(2,7,6);imshow(word6);title('字符6','FontWeight','Bold');

subplot(2,7,7);imshow(word7);title('字符7','FontWeight','Bold');

subplot(2,7,8);imshow(word11);title('字符1','FontWeight','Bold');

subplot(2,7,9);imshow(word21);title('字符2','FontWeight','Bold');

subplot(2,7,10);imshow(word31);title('字符3','FontWeight','Bold');

subplot(2,7,11);imshow(word41);title('字符4','FontWeight','Bold');

subplot(2,7,12);imshow(word51);title('字符5','FontWeight','Bold');

subplot(2,7,13);imshow(word61);title('字符6','FontWeight','Bold');

subplot(2,7,14);imshow(word71);title('字符7','FontWeight','Bold');

end

functionmask=Mask_Process(Img,id)

%图像蒙版处理函数

%输入参数:

%Img——图像矩阵

%id——图像序号

%输出参数:

%mask——模板图像

%如果已经存在模板图像则不再取模板

=sprintf('mask\\mask%d.jpg',id);

ifexist(,'file')

mask=imread();

if~isa(mask,'logical')

mask=im2bw(mask);

end

sz=size(Img);

if~isequal(sz(1:

2),size(mask))

mask=imresize(mask,sz(1:

2));

mask=logical(mask);

end

return;

end

I=Img;

Ptn=[];

figure;

subplot(1,3,1);imshow(I);

title('取点_{左键取点,右键退出}','Color','r',...

'FontWeight','Bold');

holdon;

set(gcf,'units','normalized','position',[0011]);

[x,y,button]=ginput

(1);%点击

whilebutton==1

plot(x,y,'r+','LineWidth',2);%绘制节点

Ptn=[Ptn;xy];%存储节点

[x,y,button]=ginput

(1);%点击

end

ifsize(Ptn,1)<2

return;

end

Ptn=[Ptn;Ptn(1,:

)];

plot(Ptn(:

1),Ptn(:

2),'ro-','LineWidth',2,'MarkerFaceColor','k');

title('原图像','Color','k',...

'FontWeight','Bold');

mask=Get_PointSplineMask(I,Ptn);%获取蒙板图像

subplot(1,3,2);imshow(mask);

title('蒙板图像','Color','k',...

'FontWeight','Bold');

ifndims(I)==3

I1=I.*uint8(cat(3,mask,mask,mask));

else

if~isequal(size(I),size(mask))

mask=imresize(mask,size(I));

mask=logical(mask);

end

I1=I.*mask;

end

subplot(1,3,3);imshow(I1);

title('蒙板分割结果','Color','k',...

'FontWeight','Bold');

imwrite(ma

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