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export.py
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export.py
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import argparse
from typing import List
import torch
from lightglue_onnx import DISK, LightGlue, LightGlueEnd2End, SuperPoint
from lightglue_onnx.end2end import normalize_keypoints
from lightglue_onnx.utils import load_image, rgb_to_grayscale
def parse_args() -> argparse.Namespace:
parser = argparse.ArgumentParser()
parser.add_argument(
"--img_size",
nargs="+",
type=int,
default=512,
required=False,
help="Sample image size for ONNX tracing. If a single integer is given, resize the longer side of the image to this value. Otherwise, please provide two integers (height width).",
)
parser.add_argument(
"--extractor_type",
type=str,
default="superpoint",
choices=["superpoint", "disk"],
required=False,
help="Type of feature extractor. Supported extractors are 'superpoint' and 'disk'. Defaults to 'superpoint'.",
)
parser.add_argument(
"--extractor_path",
type=str,
default=None,
required=False,
help="Path to save the feature extractor ONNX model.",
)
parser.add_argument(
"--lightglue_path",
type=str,
default=None,
required=False,
help="Path to save the LightGlue ONNX model.",
)
parser.add_argument(
"--end2end",
action="store_true",
help="Whether to export an end-to-end pipeline instead of individual models.",
)
parser.add_argument(
"--dynamic", action="store_true", help="Whether to allow dynamic image sizes."
)
# Extractor-specific args:
parser.add_argument(
"--max_num_keypoints",
type=int,
default=None,
required=False,
help="Maximum number of keypoints outputted by the extractor.",
)
return parser.parse_args()
def export_onnx(
img_size=512,
extractor_type="superpoint",
extractor_path=None,
lightglue_path=None,
img0_path="assets/sacre_coeur1.jpg",
img1_path="assets/sacre_coeur2.jpg",
end2end=False,
dynamic=False,
max_num_keypoints=None,
):
# Handle args
if isinstance(img_size, List) and len(img_size) == 1:
img_size = img_size[0]
if extractor_path is not None and end2end:
raise ValueError(
"Extractor will be combined with LightGlue when exporting end-to-end model."
)
if extractor_path is None:
extractor_path = f"weights/{extractor_type}.onnx"
if max_num_keypoints is not None:
extractor_path = extractor_path.replace(
".onnx", f"_{max_num_keypoints}.onnx"
)
if lightglue_path is None:
lightglue_path = (
f"weights/{extractor_type}_lightglue"
f"{'_end2end' if end2end else ''}"
".onnx"
)
# Sample images for tracing
image0, scales0 = load_image(img0_path, resize=img_size)
image1, scales1 = load_image(img1_path, resize=img_size)
# Models
extractor_type = extractor_type.lower()
if extractor_type == "superpoint":
# SuperPoint works on grayscale images.
image0 = rgb_to_grayscale(image0)
image1 = rgb_to_grayscale(image1)
extractor = SuperPoint(max_num_keypoints=max_num_keypoints).eval()
lightglue = LightGlue(extractor_type).eval()
elif extractor_type == "disk":
extractor = DISK(max_num_keypoints=max_num_keypoints).eval()
lightglue = LightGlue(extractor_type).eval()
else:
raise NotImplementedError(
f"LightGlue has not been trained on {extractor_type} features."
)
# ONNX Export
if end2end:
pipeline = LightGlueEnd2End(extractor, lightglue).eval()
dynamic_axes = {
"kpts0": {1: "num_keypoints0"},
"kpts1": {1: "num_keypoints1"},
"matches0": {0: "num_matches0"},
"mscores0": {0: "num_matches0"},
}
if dynamic:
dynamic_axes.update(
{
"image0": {2: "height0", 3: "width0"},
"image1": {2: "height1", 3: "width1"},
}
)
torch.onnx.export(
pipeline,
(image0[None], image1[None]),
lightglue_path,
input_names=["image0", "image1"],
output_names=[
"kpts0",
"kpts1",
"matches0",
"mscores0",
],
opset_version=17,
dynamic_axes=dynamic_axes,
)
else:
# Export Extractor
dynamic_axes = {
"keypoints": {1: "num_keypoints"},
"scores": {1: "num_keypoints"},
"descriptors": {1: "num_keypoints"},
}
if dynamic:
dynamic_axes.update({"image": {2: "height", 3: "width"}})
else:
print(
f"WARNING: Exporting without --dynamic implies that the {extractor_type} extractor's input image size will be locked to {image0.shape[-2:]}"
)
extractor_path = extractor_path.replace(
".onnx", f"_{image0.shape[-2]}x{image0.shape[-1]}.onnx"
)
torch.onnx.export(
extractor,
image0[None],
extractor_path,
input_names=["image"],
output_names=["keypoints", "scores", "descriptors"],
opset_version=17,
dynamic_axes=dynamic_axes,
)
# Export LightGlue
feats0, feats1 = extractor(image0[None]), extractor(image1[None])
kpts0, scores0, desc0 = feats0
kpts1, scores1, desc1 = feats1
kpts0 = normalize_keypoints(kpts0, image0.shape[1], image0.shape[2])
kpts1 = normalize_keypoints(kpts1, image1.shape[1], image1.shape[2])
torch.onnx.export(
lightglue,
(kpts0, kpts1, desc0, desc1),
lightglue_path,
input_names=["kpts0", "kpts1", "desc0", "desc1"],
output_names=["matches0", "mscores0"],
opset_version=17,
dynamic_axes={
"kpts0": {1: "num_keypoints0"},
"kpts1": {1: "num_keypoints1"},
"desc0": {1: "num_keypoints0"},
"desc1": {1: "num_keypoints1"},
"matches0": {0: "num_matches0"},
"mscores0": {0: "num_matches0"},
},
)
if __name__ == "__main__":
args = parse_args()
export_onnx(**vars(args))