Download Fixed Edsr-x3.pb -

cv2.imwrite('superres.png', cv2.cvtColor(sr, cv2.COLOR_RGB2BGR))

[1] Lim, B., et al. "Enhanced deep residual networks for single image super-resolution." CVPRW 2017. [2] TensorFlow Model Export Guide – SavedModel to .pb. Download Fixed Edsr-x3.pb

graph = load_pb('EDSR_x3.pb') input_tensor = graph.get_tensor_by_name('input:0') output_tensor = graph.get_tensor_by_name('output:0') lr = cv2.imread('lowres.png') # shape (H, W, 3) lr = cv2.cvtColor(lr, cv2.COLOR_BGR2RGB) lr_input = np.expand_dims(lr, 0) # (1, H, W, 3) Run inference with tf.compat.v1.Session(graph=graph) as sess: sr = sess.run(output_tensor, feed_dict={input_tensor: lr_input}) sr = np.squeeze(sr, 0) # (H 3, W 3, 3) graph = load_pb('EDSR_x3

The EDSR architecture [1], known for removing batch normalization layers for better performance, is widely used for upscaling images by factors of 2, 3, and 4. The x3 variant performs 3× super-resolution. However, naively converted .pb files often contain hardcoded input dimensions or broken rescaling nodes. The "fixed" version corrects these issues, accepting variable input sizes and properly outputting RGB images. The "fixed" version corrects these issues