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  • 文件下载案例 January 27,2020

     

    ## 案例:
    * 文件下载需求:
      1. 页面显示超链接
      2. 点击超链接后弹出下载提示框
      3. 完成图片文件下载


    * 分析:
      1. 超链接指向的资源如果能够被浏览器解析,则在浏览器中展示,如果不能解析,则弹出下载提示框。不满足需求
      2. 任何资源都必须弹出下载提示框
      3. 使用响应头设置资源的打开方式:
      * content-disposition:attachment;filename=xxx


    * 步骤:
      1. 定义页面,编辑超链接href属性,指向Servlet,传递资源名称filename
      2. 定义Servlet
        1. 获取文件名称
        2. 使用字节输入流加载文件进内存
        3. 指定response的响应头: content-disposition:attachment;filename=xxx
        4. 将数据写出到response输出流


    * 问题:
    * 中文文件问题
      * 解决思路:
        1. 获取客户端使用的浏览器版本信息
        2. 根据不同的版本信息,设置filename的编码方式不同

    package web.download;
    
    import javax.servlet.ServletContext;
    import javax.servlet.ServletException;
    import javax.servlet.ServletOutputStream;
    import javax.servlet.annotation.WebServlet;
    import javax.servlet.http.HttpServlet;
    import javax.servlet.http.HttpServletRequest;
    import javax.servlet.http.HttpServletResponse;
    import java.io.FileInputStream;
    import java.io.IOException;
    
    @WebServlet("/downloadServlet")
    public class DownloadServlet extends HttpServlet {
        protected void doPost(HttpServletRequest request, HttpServletResponse response) throws ServletException, IOException {
            //1.获取请求参数---文件名称
            String filename = request.getParameter("filename");
            //2.使用字节输入流加载文件进内存
            //2.1找到文件服务器路径
            ServletContext servletContext = this.getServletContext();
            String realPath = servletContext.getRealPath("/img/"+filename);
            //2.2用字节流关联
            FileInputStream fileInputStream = new FileInputStream(realPath);
            //3.设置response的响应头
            //3.1设置响应头类型:content-type
    
            String mimeType = servletContext.getMimeType(filename);
            response.setHeader("content-type",mimeType);
             /* 解决中文文件名问题
                //1.获取user-agent请求头、
                String agent = request.getHeader("user-agent");
                //2.使用工具类方法编码文件名即可
                filename = DownLoadUtils.getFileName(agent, filename);
               */
            //3.2设置响应头打开方式:content-disposition
            response.setHeader("content-disposition","attachment;filename="+filename);
            //4.将输入流的数据写出到输出流中
            ServletOutputStream sos = response.getOutputStream();
            byte [] buff = new byte[1024*8];
            int count = fileInputStream.read(buff);
            while (count!=-1){
                sos.write(buff,0,count);
                count = fileInputStream.read(buff);
            }
            fileInputStream.close();
        }
    
        protected void doGet(HttpServletRequest request, HttpServletResponse response) throws ServletException, IOException {
            this.doPost(request,response);
        }
    }
    package web.utils;
    /*
    import sun.misc.BASE64Encoder;
    import java.io.UnsupportedEncodingException;
    import java.net.URLEncoder;
    
    
    public class DownLoadUtils {
    
        public static String getFileName(String agent, String filename) throws UnsupportedEncodingException {
            if (agent.contains("MSIE")) {
                // IE浏览器
                filename = URLEncoder.encode(filename, "utf-8");
                filename = filename.replace("+", " ");
            } else if (agent.contains("Firefox")) {
                // 火狐浏览器
                BASE64Encoder base64Encoder = new BASE64Encoder();
                filename = "=?utf-8?B?" + base64Encoder.encode(filename.getBytes("utf-8")) + "?=";
            } else {
                // 其它浏览器
                filename = URLEncoder.encode(filename, "utf-8");
            }
            return filename;
        }
    }*/
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  • 原文地址:https://www.cnblogs.com/yyanghang/p/12236061.html
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