fp A filename (string), pathlib.Path object or a file object. First, we import the base64 module Then open the file which contains base64 string data for an image. Another Example: Here we used .PNG extension file. thanks radarhere. You . If not, please open a new issue with more specifics. Why is the eastern United States green if the wind moves from west to east? to your account. python base64 to image. You can vote up the ones you like or vote down the ones you don't like, and go to the original project or source file by following the links above each example. the following code is throwing an error Error with file: string argument expected, got 'bytes'. Python base64.b64encode () function encodes a string using Base64 and returns that string. PIL stands for Python Imaging Library, and it's the original library that enabled Python to deal with images. Why do quantum objects slow down when volume increases? I am searching for this about six hours. I found out that base64 shoud be encoded again because symbol as '+' will not be sent. You may also want to check out all available functions/classes of the module PIL.Image, or try the search function . You can use the following code: import io from PIL import Image im = Image.open('test.jpg') im_resize = im.resize( (500, 500)) buf = io.BytesIO() im_resize.save(buf, format='JPEG') byte_im = buf.getvalue() In the above code, we save the im_resize Image object into BytesIO object buf. Add a new light switch in line with another switch? Browse other questions tagged, Where developers & technologists share private knowledge with coworkers, Reach developers & technologists worldwide, In that case, that code works fine for me once I change, Regarding your edit, where is that error occurring?I don't believe it is occurring in the code you've shown us, You didn't say anything about JSON before! See new(). By using our site, you I forgot this important thing. Now that we know some of the fundamentals of PIL, let's try to do some tricks. How do I concatenate two lists in Python? It should be noted that the Base64 String resulting from the conversion of the image content is without the header/html tag (data:image/jpeg;base64,), this is used to declare the data type when h5 is used. The module also provides a number of factory functions, including functions to load images from files, and to create new images. In our case, the mode is 'rb' (read binary). By clicking Sign up for GitHub, you agree to our terms of service and if I test with the base64 string on back end function, the picture is saved without error, and size is 400k or so. You can run this code and see the result. Ready to optimize your JavaScript with Rust? I am getting syntax error. to resolve this i modified the code and voila: Convert base64 string to png and jpg failed, 'data:image/png;base64,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