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full_eval.py
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#
# Copyright (C) 2023, Inria
# GRAPHDECO research group, https://team.inria.fr/graphdeco
# All rights reserved.
#
# This software is free for non-commercial, research and evaluation use
# under the terms of the LICENSE.md file.
#
# For inquiries contact george.drettakis@inria.fr
#
import os
from argparse import ArgumentParser
import subprocess
import re
import csv
# Scene-specific budgets for "big" mode (final_count)
target_primitives_list = {
"bicycle": [i for i in range(500_000,5_000_000+1,500_000)]+[5987095],
"flowers": [i for i in range(500_000,3_000_000+1,500_000)]+[3618411],
"garden": [i for i in range(500_000,5_000_000+1,500_000)]+[5728191],
"stump":[i for i in range(200_000,2_000_000+1,200_000)]+[4867429],
"treehill":[i for i in range(200_000,2_000_000+1,200_000)]+[3770257],
"room": [i for i in range(200_000,1_000_000+1,200_000)]+[1548960],
"counter": [i for i in range(200_000,1_000_000+1,200_000)]+[1190919],
"kitchen": [i for i in range(300_000,1_000_000+1,100_000)]+[1803735],
"bonsai": [i for i in range(300_000,1_000_000+1,100_000)]+[1252367],
"truck": [i for i in range(200_000,2_000_000+1,200_000)]+[2584171],
"train": [i for i in range(200_000,1_000_000+1,200_000)]+[1085480],
"playroom": [i for i in range(100_000,1_000_000+1,100_000)]+[2326100],
"drjohnson": [i for i in range(100_000,1_000_000+1,100_000)]+[3273600],
}
images={
"bicycle": "images_4",
"flowers": "images_4",
"garden": "images_4",
"stump": "images_4",
"treehill": "images_4",
"room": "images_2",
"counter": "images_2",
"kitchen": "images_2",
"bonsai": "images_2",
"truck": "images",
"train": "images",
"playroom": "images",
"drjohnson": "images",
}
parser = ArgumentParser(description="Full evaluation script parameters")
parser.add_argument("--skip_training", action="store_true")
parser.add_argument("--output_path", default="./output")
parser.add_argument("--repeat", default=3, type=int)
parser.add_argument('--mipnerf360', "-m360", required=True, type=str)
parser.add_argument("--tanksandtemples", "-tat", required=True, type=str)
parser.add_argument("--deepblending", "-db", required=True, type=str)
args, _ = parser.parse_known_args()
datasets={
"mipnerf360_indoor":["bicycle", "flowers", "garden", "stump", "treehill"],
"mipnerf360_outdoor":["room", "counter", "kitchen", "bonsai"],
"tanksandtemples":["truck", "train"],
"deepblending":["drjohnson", "playroom"],
}
img_folder={
"mipnerf360_indoor":"images_4",
"mipnerf360_outdoor":"images_2",
"tanksandtemples":"images",
"deepblending":"images",
}
custom_config={
"mipnerf360_indoor":" ",
"mipnerf360_outdoor":" ",
"tanksandtemples":" --iterations 40000 --position_lr_max_steps 40000",#follow 3d student splatting and scooping
"deepblending":" ",
}
training_args_tempalte="-s {0} -m {1} --eval --sh_degree 3 --target_primitives {2} -i {3}"
eval_args_template="-s {0} -m {1} --sh_degree 3 -i {2} --eval"
take_time_pattern = r"takes:\s*([+-]?\d+(?:\.\d+)?)"
eval_pattern = r"(SSIM|PSNR|LPIPS)\s*:\s*([+-]?\d+(?:\.\d+)?)"
csv_header=["scene","primitives","repeat_i","time","SSIM_train","PSNR_train","LPIPS_train","SSIM_test","PSNR_test","LPIPS_test"]
csv_file=open(os.path.join(args.output_path,"litegs_results.csv"), 'w', newline="")
result_csv_writer=csv.writer(csv_file)
result_csv_writer.writerow(csv_header)
for dataset,scenes in datasets.items():
for scene_name in scenes:
scene_input_path=os.path.join(args.__getattribute__(dataset.split('_')[0]),scene_name)
#curve
for target_primitives in target_primitives_list[scene_name]:
for i in range(args.repeat):
#training
scene_output_path=os.path.join(args.output_path,scene_name+'-{}k-{}'.format(int(target_primitives/1000), i))
print("------------ scene:{} #primitive:{} ------------".format(scene_name,target_primitives))
training_args=training_args_tempalte.format(scene_input_path,scene_output_path,target_primitives,img_folder[dataset])
process = subprocess.Popen(["python","example_train.py"]+training_args.split(' '), stdout=subprocess.PIPE, stderr=subprocess.PIPE, text=True)
stdout, stderr = process.communicate()
match = re.search(take_time_pattern, stdout)
if match:
training_time=float(match.group(1))
print("takes: {} s".format(training_time))
else:
print("Failed to extract training time from output: {}".format(stdout))
print(stderr)
#evaluation
if not os.path.exists(scene_output_path):
print("Output path {} does not exist, skipping evaluation for scene {}, primitives {}, repeat {}".format(scene_output_path, scene_name, target_primitives, i))
continue
eval_args=eval_args_template.format(scene_input_path,scene_output_path,img_folder[dataset])
process = subprocess.Popen(["python","example_metrics.py"]+eval_args.split(' '), stdout=subprocess.PIPE, stderr=subprocess.PIPE, text=True)
stdout, stderr = process.communicate()
matches = re.findall(eval_pattern, stdout)
if len(matches)==6:
SSIM_train=float(matches[0][1])
PSNR_train=float(matches[1][1])
LPIPS_train=float(matches[2][1])
SSIM_test=float(matches[3][1])
PSNR_test=float(matches[4][1])
LPIPS_test=float(matches[5][1])
result_csv_writer.writerow([scene_name,target_primitives,i,training_time,SSIM_train,PSNR_train,LPIPS_train,SSIM_test,PSNR_test,LPIPS_test])
csv_file.flush()
print("SSIM_train: {}\n PSNR_train: {}\n LPIPS_train: {}\n SSIM_test: {}\n PSNR_test: {}\n LPIPS_test: {}".format(SSIM_train, PSNR_train, LPIPS_train, SSIM_test, PSNR_test, LPIPS_test))