python通过文件头判断文件类型
对于提供上传的服务器,需要对上传的文件进行过滤。
本文为大家提供了python通过文件头判断文件类型的方法,避免不必要的麻烦。
分享代码如下
import struct # 支持文件类型 # 用16进制字符串的目的是可以知道文件头是多少字节 # 各种文件头的长度不一样,少半2字符,长则8字符 def typeList(): return { "52617221": EXT_RAR, "504B0304": EXT_ZIP} # 字节码转16进制字符串 def bytes2hex(bytes): num = len(bytes) hexstr = u"" for i in range(num): t = u"%x" % bytes[i] if len(t) % 2: hexstr += u"0" hexstr += t return hexstr.upper() # 获取文件类型 def filetype(filename): binfile = open(filename, 'rb') # 必需二制字读取 tl = typeList() ftype = 'unknown' for hcode in tl.keys(): numOfBytes = len(hcode) / 2 # 需要读多少字节 binfile.seek(0) # 每次读取都要回到文件头,不然会一直往后读取 hbytes = struct.unpack_from("B"*numOfBytes, binfile.read(numOfBytes)) # 一个 "B"表示一个字节 f_hcode = bytes2hex(hbytes) if f_hcode == hcode: ftype = tl[hcode] break binfile.close() return ftype if __name__ == '__main__': print filetype(Your-file-path)
常见文件格式的文件头
文件格式 文件头(十六进制)
JPEG (jpg) FFD8FF
PNG (png) 89504E47
GIF (gif) 47494638
TIFF (tif) 49492A00
Windows Bitmap (bmp) 424D
CAD (dwg) 41433130
Adobe Photoshop (psd) 38425053
Rich Text Format (rtf) 7B5C727466
XML (xml) 3C3F786D6C
HTML (html) 68746D6C3E
Email [thorough only] (eml) 44656C69766572792D646174653A
Outlook Express (dbx) CFAD12FEC5FD746F
Outlook (pst) 2142444E
MS Word/Excel (xls.or.doc) D0CF11E0
MS Access (mdb) 5374616E64617264204A
以上就是本文的全部内容,希望对大家的学习有所帮助。

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