import os baseLoc = os.path.dirname(os.path.realpath(__file__)) + '/' from gimpfu import * import sys sys.path.extend([baseLoc + 'gimpenv/lib/python2.7', baseLoc + 'gimpenv/lib/python2.7/site-packages', baseLoc + 'gimpenv/lib/python2.7/site-packages/setuptools', baseLoc + 'MiDaS']) from run import run_depth from monodepth_net import MonoDepthNet import MiDaS_utils as MiDaS_utils import numpy as np import cv2 def getMonoDepth(input_image): image = input_image / 255.0 out = run_depth(image, baseLoc+'weights/MiDaS/model.pt', MonoDepthNet, MiDaS_utils, target_w=640) out = np.repeat(out[:, :, np.newaxis], 3, axis=2) d1,d2 = input_image.shape[:2] out = cv2.resize(out,(d2,d1)) # cv2.imwrite("/Users/kritiksoman/PycharmProjects/new/out.png", out) return out def channelData(layer): # convert gimp image to numpy region = layer.get_pixel_rgn(0, 0, layer.width, layer.height) pixChars = region[:, :] # Take whole layer bpp = region.bpp # return np.frombuffer(pixChars,dtype=np.uint8).reshape(len(pixChars)/bpp,bpp) return np.frombuffer(pixChars, dtype=np.uint8).reshape(layer.height, layer.width, bpp) def createResultLayer(image, name, result): rlBytes = np.uint8(result).tobytes(); rl = gimp.Layer(image, name, image.width, image.height, image.active_layer.type, 100, NORMAL_MODE) region = rl.get_pixel_rgn(0, 0, rl.width, rl.height, True) region[:, :] = rlBytes image.add_layer(rl, 0) gimp.displays_flush() def MonoDepth(img, layer): gimp.progress_init("Generating disparity map for " + layer.name + "...") imgmat = channelData(layer) cpy = getMonoDepth(imgmat) createResultLayer(img, 'new_output', cpy) register( "MonoDepth", "MonoDepth", "Generate monocular disparity map based on deep learning.", "Kritik Soman", "Your", "2020", "MonoDepth...", "*", # Alternately use RGB, RGB*, GRAY*, INDEXED etc. [(PF_IMAGE, "image", "Input image", None), (PF_DRAWABLE, "drawable", "Input drawable", None), ], [], MonoDepth, menu="/Layer/GIML-ML") main()