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Java对图片Base64转码--HTML对Base64解码

时间:2017-06-03 11:14:01      阅读:266      评论:0      收藏:0      [点我收藏+]

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Java对图片Base64转码

 

    package base64;
    import java.awt.image.BufferedImage;  
    import java.io.ByteArrayInputStream;  
    import java.io.ByteArrayOutputStream;  
    import java.io.File;  
    import java.io.IOException;  
    import javax.imageio.ImageIO;  
    import sun.misc.BASE64Decoder;  
    import sun.misc.BASE64Encoder;  
      
    public class imageToBase64 {  
        static BASE64Encoder encoder = new sun.misc.BASE64Encoder();  
        static BASE64Decoder decoder = new sun.misc.BASE64Decoder(); 
        public static void main(String[] args) {  
            System.out.println(getImageBinary());  
        	base64StringToImage(getImageBinary()); 
        }  
          
        // 编码图片到Base64,文件请放在C盘根文件夹下。名字必须为wjp.png
        static String getImageBinary(){
            File f = new File("C:/wjp.png");         
            BufferedImage bi;  
            try {
                bi = ImageIO.read(f);  
                ByteArrayOutputStream baos = new ByteArrayOutputStream();  
                ImageIO.write(bi, "jpg", baos);  
                byte[] bytes = baos.toByteArray();  
                  
                return encoder.encodeBuffer(bytes).trim();  
            } catch (IOException e) {  
                e.printStackTrace();  
            }  
            return null;  
        }  
          
        // 解码Base64成为图片。保存在D盘根文件夹下,名字为wjp.png
        static void base64StringToImage(String base64String){  
            try {  
                byte[] bytes1 = decoder.decodeBuffer(base64String);                
                ByteArrayInputStream bais = new ByteArrayInputStream(bytes1);  
                BufferedImage bi1 =ImageIO.read(bais);  
                File w2 = new File("d://wjp.png");
                ImageIO.write(bi1, "jpg", w2);
            } catch (IOException e) {  
                e.printStackTrace();  
            }  
        }  
      
    }  


HTML对Base64解码

 

<html>
	<head>
		<meta http-equiv="Content-Type" content="text/html; charset=gbk">
		<title></title>
		
		<script type="text/javascript">	
			//hideElement()  ,  showElement()
			function hideElement(id){
				document.getElementById(id).style.display="none";
			}
			function showElement(id){
				document.getElementById(id).style.display="";
			}
			
			function wjp(id){
				if(id == 1){
					var values = document.getElementById("code").value ;
					var str = "<span><img src=\"data:image/gif;base64," + values + "\"/></span><br />" ;
					showElement("div2") ;
					hideElement("div1") ;
					document.getElementById("insert").innerHTML = str;
				}
				if(id == 2){
				
					showElement("div1") ;
					hideElement("div2") ;
					document.getElementById("code").value = "" ;
				}
			}

		</script>
	</head>
	<body>
		<center>
			<div id="div1">
				<h2 style="color:red;">W_Jp Base64解码</h2>
				<textarea rows="20" cols="100" id="code"></textarea>
				<br />
				<input type="button" value="转码" onclick="wjp(1)"/>
				<br /><br /><br /><br /><br />
			</div>
			
			<div id="div2">
				<h2 style="color:red;">W_Jp 给您的结果</h2>
				<label id="insert"></label>
				<input type="button" value="继续转码" onclick="wjp(2)"/>
			</div>
			
		</center>
		
		<script type="text/javascript">
			showElement("div1") ;
			hideElement("div2") ;
		</script>
		
	</body>
</html>


给大家一组測试数据。能够尝试用我的HTML代码去试试。看看能否显示出图片。

 

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Java对图片Base64转码--HTML对Base64解码

标签:nsx   mmc   htk   mmx   bsp   vcl   image   []   gap   

原文地址:http://www.cnblogs.com/ljbguanli/p/6936266.html

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