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inference.py
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inference.py
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# Python 2/3 compatiblity
from __future__ import print_function
from __future__ import division
import joblib
import os
from utils import convert_to_color_, convert_from_color_, get_device
from datasets import open_file
from models import get_model, test
import numpy as np
import seaborn as sns
from skimage import io
import argparse
import torch
# Test options
parser = argparse.ArgumentParser(
description="Run deep learning experiments on" " various hyperspectral datasets"
)
parser.add_argument(
"--model",
type=str,
default=None,
help="Model to train. Available:\n"
"SVM (linear), "
"SVM_grid (grid search on linear, poly and RBF kernels), "
"baseline (fully connected NN), "
"hu (1D CNN), "
"hamida (3D CNN + 1D classifier), "
"lee (3D FCN), "
"chen (3D CNN), "
"li (3D CNN), "
"he (3D CNN), "
"luo (3D CNN), "
"sharma (2D CNN), "
"boulch (1D semi-supervised CNN), "
"liu (3D semi-supervised CNN), "
"mou (1D RNN)",
)
parser.add_argument(
"--cuda",
type=int,
default=-1,
help="Specify CUDA device (defaults to -1, which learns on CPU)",
)
parser.add_argument(
"--checkpoint",
type=str,
default=None,
help="Weights to use for initialization, e.g. a checkpoint",
)
group_test = parser.add_argument_group("Test")
group_test.add_argument(
"--test_stride",
type=int,
default=1,
help="Sliding window step stride during inference (default = 1)",
)
group_test.add_argument(
"--image",
type=str,
default=None,
nargs="?",
help="Path to an image on which to run inference.",
)
group_test.add_argument(
"--only_test",
type=str,
default=None,
nargs="?",
help="Choose the data on which to test the trained algorithm ",
)
group_test.add_argument(
"--mat",
type=str,
default=None,
nargs="?",
help="In case of a .mat file, define the variable to call inside the file",
)
group_test.add_argument(
"--n_classes",
type=int,
default=None,
nargs="?",
help="When using a trained algorithm, specified the number of classes of this algorithm",
)
# Training options
group_train = parser.add_argument_group("Model")
group_train.add_argument(
"--patch_size",
type=int,
help="Size of the spatial neighbourhood (optional, if "
"absent will be set by the model)",
)
group_train.add_argument(
"--batch_size",
type=int,
help="Batch size (optional, if absent will be set by the model",
)
args = parser.parse_args()
CUDA_DEVICE = get_device(args.cuda)
MODEL = args.model
# Testing file
MAT = args.mat
N_CLASSES = args.n_classes
INFERENCE = args.image
TEST_STRIDE = args.test_stride
CHECKPOINT = args.checkpoint
img_filename = os.path.basename(INFERENCE)
basename = MODEL + img_filename
dirname = os.path.dirname(INFERENCE)
img = open_file(INFERENCE)
if MAT is not None:
img = img[MAT]
# Normalization
img = np.asarray(img, dtype="float32")
img = (img - np.min(img)) / (np.max(img) - np.min(img))
N_BANDS = img.shape[-1]
hyperparams = vars(args)
hyperparams.update(
{
"n_classes": N_CLASSES,
"n_bands": N_BANDS,
"device": CUDA_DEVICE,
"ignored_labels": [0],
}
)
hyperparams = dict((k, v) for k, v in hyperparams.items() if v is not None)
palette = {0: (0, 0, 0)}
for k, color in enumerate(sns.color_palette("hls", N_CLASSES)):
palette[k + 1] = tuple(np.asarray(255 * np.array(color), dtype="uint8"))
invert_palette = {v: k for k, v in palette.items()}
def convert_to_color(x):
return convert_to_color_(x, palette=palette)
def convert_from_color(x):
return convert_from_color_(x, palette=invert_palette)
if MODEL in ["SVM", "SVM_grid", "SGD", "nearest"]:
model = joblib.load(CHECKPOINT)
w, h = img.shape[:2]
X = img.reshape((w * h, N_BANDS))
prediction = model.predict(X)
prediction = prediction.reshape(img.shape[:2])
else:
model, _, _, hyperparams = get_model(MODEL, **hyperparams)
model.load_state_dict(torch.load(CHECKPOINT))
probabilities = test(model, img, hyperparams)
prediction = np.argmax(probabilities, axis=-1)
filename = dirname + "/" + basename + ".tif"
io.imsave(filename, prediction)
basename = "color_" + basename
filename = dirname + "/" + basename + ".tif"
io.imsave(filename, convert_to_color(prediction))