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infer.py
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infer.py
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import glob
import os
import numpy as np
import torch
import torch.nn as nn
from PIL import Image
from torchvision import transforms
from tqdm import tqdm
import model_io
import utils
from models import UnetAdaptiveBins
def _is_pil_image(img):
return isinstance(img, Image.Image)
def _is_numpy_image(img):
return isinstance(img, np.ndarray) and (img.ndim in {2, 3})
class ToTensor(object):
def __init__(self):
self.normalize = transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225])
def __call__(self, image, target_size=(640, 480)):
# image = image.resize(target_size)
image = self.to_tensor(image)
image = self.normalize(image)
return image
def to_tensor(self, pic):
if not (_is_pil_image(pic) or _is_numpy_image(pic)):
raise TypeError(
'pic should be PIL Image or ndarray. Got {}'.format(type(pic)))
if isinstance(pic, np.ndarray):
img = torch.from_numpy(pic.transpose((2, 0, 1)))
return img
# handle PIL Image
if pic.mode == 'I':
img = torch.from_numpy(np.array(pic, np.int32, copy=False))
elif pic.mode == 'I;16':
img = torch.from_numpy(np.array(pic, np.int16, copy=False))
else:
img = torch.ByteTensor(torch.ByteStorage.from_buffer(pic.tobytes()))
# PIL image mode: 1, L, P, I, F, RGB, YCbCr, RGBA, CMYK
if pic.mode == 'YCbCr':
nchannel = 3
elif pic.mode == 'I;16':
nchannel = 1
else:
nchannel = len(pic.mode)
img = img.view(pic.size[1], pic.size[0], nchannel)
img = img.transpose(0, 1).transpose(0, 2).contiguous()
if isinstance(img, torch.ByteTensor):
return img.float()
else:
return img
class InferenceHelper:
def __init__(self, dataset='nyu', device='cuda:0'):
self.toTensor = ToTensor()
self.device = device
if dataset == 'nyu':
self.min_depth = 1e-3
self.max_depth = 10
self.saving_factor = 1000 # used to save in 16 bit
model = UnetAdaptiveBins.build(n_bins=256, min_val=self.min_depth, max_val=self.max_depth)
pretrained_path = "./pretrained/AdaBins_nyu.pt"
elif dataset == 'kitti':
self.min_depth = 1e-3
self.max_depth = 80
self.saving_factor = 256
model = UnetAdaptiveBins.build(n_bins=256, min_val=self.min_depth, max_val=self.max_depth)
pretrained_path = "./pretrained/AdaBins_kitti.pt"
else:
raise ValueError("dataset can be either 'nyu' or 'kitti' but got {}".format(dataset))
model, _, _ = model_io.load_checkpoint(pretrained_path, model)
model.eval()
self.model = model.to(self.device)
@torch.no_grad()
def predict_pil(self, pil_image, visualized=False):
# pil_image = pil_image.resize((640, 480))
img = np.asarray(pil_image) / 255.
img = self.toTensor(img).unsqueeze(0).float().to(self.device)
bin_centers, pred = self.predict(img)
if visualized:
viz = utils.colorize(torch.from_numpy(pred).unsqueeze(0), vmin=None, vmax=None, cmap='magma')
# pred = np.asarray(pred*1000, dtype='uint16')
viz = Image.fromarray(viz)
return bin_centers, pred, viz
return bin_centers, pred
@torch.no_grad()
def predict(self, image):
bins, pred = self.model(image)
pred = np.clip(pred.cpu().numpy(), self.min_depth, self.max_depth)
# Flip
image = torch.Tensor(np.array(image.cpu().numpy())[..., ::-1].copy()).to(self.device)
pred_lr = self.model(image)[-1]
pred_lr = np.clip(pred_lr.cpu().numpy()[..., ::-1], self.min_depth, self.max_depth)
# Take average of original and mirror
final = 0.5 * (pred + pred_lr)
final = nn.functional.interpolate(torch.Tensor(final), image.shape[-2:],
mode='bilinear', align_corners=True).cpu().numpy()
final[final < self.min_depth] = self.min_depth
final[final > self.max_depth] = self.max_depth
final[np.isinf(final)] = self.max_depth
final[np.isnan(final)] = self.min_depth
centers = 0.5 * (bins[:, 1:] + bins[:, :-1])
centers = centers.cpu().squeeze().numpy()
centers = centers[centers > self.min_depth]
centers = centers[centers < self.max_depth]
return centers, final
@torch.no_grad()
def predict_dir(self, test_dir, out_dir):
os.makedirs(out_dir, exist_ok=True)
transform = ToTensor()
all_files = glob.glob(os.path.join(test_dir, "*"))
self.model.eval()
for f in tqdm(all_files):
image = np.asarray(Image.open(f), dtype='float32') / 255.
image = transform(image).unsqueeze(0).to(self.device)
centers, final = self.predict(image)
# final = final.squeeze().cpu().numpy()
final = (final * self.saving_factor).astype('uint16')
basename = os.path.basename(f).split('.')[0]
save_path = os.path.join(out_dir, basename + ".png")
Image.fromarray(final.squeeze()).save(save_path)
if __name__ == '__main__':
import matplotlib.pyplot as plt
from time import time
img = Image.open("test_imgs/classroom__rgb_00283.jpg")
start = time()
inferHelper = InferenceHelper()
centers, pred = inferHelper.predict_pil(img)
print(f"took :{time() - start}s")
plt.imshow(pred.squeeze(), cmap='magma_r')
plt.show()