如果你是一个软件开发,不论前端后端工程师,图片的处理你是肯定要会的,关于图片的Base64编码,你可能有点陌生,但是这是一个软件工程师应该要掌握的知识点,现在很多网友把图片与base64转换都做成了小工具如:

http://www.yzcopen.com/img/imgbase64
今天我们就一起来看一下吧。
base64编码 是将数据用 64 个可打印的字符进行编码的方式,任何数据底层实现都是二进制,
所以都可以进行 base64编码,base64编码 主要用在数据传输过程中(编码、解码)。
而 Data URI 是将数据用 URI 的形式进行展现。常用的是将图片进行 base64 编码,
用 Data URI 的形式进行展现,可以说,base64编码后的字符串是某些 Data URI(这里就包括图片的 base64 URL) 的一部分。
(图片转 Base64码 之后是通过 Data URI scheme来实现显示的)

Base64编码是一种图片处理格式,通过特定的算法将图片编码成一长串字符串,在页面上显示的时候,可以用该字符串来代替图片的url属性。

下面我们用java实现图片转base64:
代码如下:

public class mainTest {
public static void main(String[]args) throws Exception { InputStream in = new FileInputStream(new File("您的图片路径"));
String str = ImageToBase64ByStream(in);
System.out.println(str);
} /**
* 文件流生成base64
* @param imgFile
* @return
*/
public static String ImageToBase64ByStream(InputStream in) {
// 将图片文件转化为字节数组字符串,并对其进行Base64编码处理
byte[] data = null;
// 读取图片字节数组
try {
data = new byte[in.available()];
in.read(data);
in.close();
BASE64Encoder encoder = new BASE64Encoder();
return encoder.encode(data);// 返回Base64编码过的字节数组字符串
} catch (IOException e) {
e.printStackTrace();
}
// 对字节数组Base64编码
return null;
} }

通过上面代码我们会得到一大段编码如:

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3f7sPQK9LkC47PUewP4jgEBwAcJlcFIKRACBCgkQLivUWFQVAQSqIUC4rEY7UUsEEChGgHBZjCul
IoBADwsQLnu48dl1BBBQhEs6AQIIIBBYgHAZGJTiEECgUgKEy0o1F5VFAIEqCBAuq9BK1BEBBIoS
IFwWJUu5CCDQswKEy55tenYcAQRqAoRLugECCCAQWIBwGRiU4hBAoFIChMtKNReVRQCBKggQLqvQ
StQRAQSKEiBcFiVLuQgg0LMChMuebXp2HAEEmBanDyCAAALhBQiX4U0pEQEEqiPAyGV12oqaIoBA
RQQIlxVpKKqJAAKFCBAuC2GlUAQQ6GUBwmUvtz77jgAC/x+9e45fD6F8igAAAABJRU5ErkJggg==
使用:

// Base64 在CSS中的使用
.box{
  background-image: url("data:image/jpg;base64,/9j/4QMZR...");
}
// Base64 在HTML中的使用
<img src="data:image/jpg;base64,/9j/4QMZR..." />

以上编码是我通过:http://www.yzcopen.com/img/imgbase64进行图片转换得到的结果

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