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# Copyright (c) OpenMMLab. All rights reserved.
"""Optimize anchor settings on a specific dataset.
This script provides two method to optimize YOLO anchors including k-means
anchor cluster and differential evolution. You can use ``--algorithm k-means``
and ``--algorithm differential_evolution`` to switch two method.
Example:
Use k-means anchor cluster::
python tools/analysis_tools/optimize_anchors.py ${CONFIG} \
--algorithm k-means --input-shape ${INPUT_SHAPE [WIDTH HEIGHT]} \
--output-dir ${OUTPUT_DIR}
Use differential evolution to optimize anchors::
python tools/analysis_tools/optimize_anchors.py ${CONFIG} \
--algorithm differential_evolution \
--input-shape ${INPUT_SHAPE [WIDTH HEIGHT]} \
--output-dir ${OUTPUT_DIR}
"""
import argparse
import os.path as osp
import mmcv
import numpy as np
import torch
from mmcv import Config
from scipy.optimize import differential_evolution
from mmdet.core import bbox_cxcywh_to_xyxy, bbox_overlaps, bbox_xyxy_to_cxcywh
from mmdet.datasets import build_dataset
from mmdet.utils import get_root_logger, replace_cfg_vals, update_data_root
def parse_args():
parser = argparse.ArgumentParser(description='Optimize anchor parameters.')
parser.add_argument('config', help='Train config file path.')
parser.add_argument(
'--device', default='cuda:0', help='Device used for calculating.')
parser.add_argument(
'--input-shape',
type=int,
nargs='+',
default=[608, 608],
help='input image size')
parser.add_argument(
'--algorithm',
default='differential_evolution',
help='Algorithm used for anchor optimizing.'
'Support k-means and differential_evolution for YOLO.')
parser.add_argument(
'--iters',
default=1000,
type=int,
help='Maximum iterations for optimizer.')
parser.add_argument(
'--output-dir',
default=None,
type=str,
help='Path to save anchor optimize result.')
args = parser.parse_args()
return args
class BaseAnchorOptimizer:
"""Base class for anchor optimizer.
Args:
dataset (obj:`Dataset`): Dataset object.
input_shape (list[int]): Input image shape of the model.
Format in [width, height].
logger (obj:`logging.Logger`): The logger for logging.
device (str, optional): Device used for calculating.
Default: 'cuda:0'
out_dir (str, optional): Path to save anchor optimize result.
Default: None
"""
def __init__(self,
dataset,
input_shape,
logger,
device='cuda:0',
out_dir=None):
self.dataset = dataset
self.input_shape = input_shape
self.logger = logger
self.device = device
self.out_dir = out_dir
bbox_whs, img_shapes = self.get_whs_and_shapes()
ratios = img_shapes.max(1, keepdims=True) / np.array([input_shape])
# resize to input shape
self.bbox_whs = bbox_whs / ratios
def get_whs_and_shapes(self):
"""Get widths and heights of bboxes and shapes of images.
Returns:
tuple[np.ndarray]: Array of bbox shapes and array of image
shapes with shape (num_bboxes, 2) in [width, height] format.
"""
self.logger.info('Collecting bboxes from annotation...')
bbox_whs = []
img_shapes = []
prog_bar = mmcv.ProgressBar(len(self.dataset))
for idx in range(len(self.dataset)):
ann = self.dataset.get_ann_info(idx)
data_info = self.dataset.data_infos[idx]
img_shape = np.array([data_info['width'], data_info['height']])
gt_bboxes = ann['bboxes']
for bbox in gt_bboxes:
wh = bbox[2:4] - bbox[0:2]
img_shapes.append(img_shape)
bbox_whs.append(wh)
prog_bar.update()
print('\n')
bbox_whs = np.array(bbox_whs)
img_shapes = np.array(img_shapes)
self.logger.info(f'Collected {bbox_whs.shape[0]} bboxes.')
return bbox_whs, img_shapes
def get_zero_center_bbox_tensor(self):
"""Get a tensor of bboxes centered at (0, 0).
Returns:
Tensor: Tensor of bboxes with shape (num_bboxes, 4)
in [xmin, ymin, xmax, ymax] format.
"""
whs = torch.from_numpy(self.bbox_whs).to(
self.device, dtype=torch.float32)
bboxes = bbox_cxcywh_to_xyxy(
torch.cat([torch.zeros_like(whs), whs], dim=1))
return bboxes
def optimize(self):
raise NotImplementedError
def save_result(self, anchors, path=None):
anchor_results = []
for w, h in anchors:
anchor_results.append([round(w), round(h)])
self.logger.info(f'Anchor optimize result:{anchor_results}')
if path:
json_path = osp.join(path, 'anchor_optimize_result.json')
mmcv.dump(anchor_results, json_path)
self.logger.info(f'Result saved in {json_path}')
class YOLOKMeansAnchorOptimizer(BaseAnchorOptimizer):
r"""YOLO anchor optimizer using k-means. Code refer to `AlexeyAB/darknet.
<https://github.com/AlexeyAB/darknet/blob/master/src/detector.c>`_.
Args:
num_anchors (int) : Number of anchors.
iters (int): Maximum iterations for k-means.
"""
def __init__(self, num_anchors, iters, **kwargs):
super(YOLOKMeansAnchorOptimizer, self).__init__(**kwargs)
self.num_anchors = num_anchors
self.iters = iters
def optimize(self):
anchors = self.kmeans_anchors()
self.save_result(anchors, self.out_dir)
def kmeans_anchors(self):
self.logger.info(
f'Start cluster {self.num_anchors} YOLO anchors with K-means...')
bboxes = self.get_zero_center_bbox_tensor()
cluster_center_idx = torch.randint(
0, bboxes.shape[0], (self.num_anchors, )).to(self.device)
assignments = torch.zeros((bboxes.shape[0], )).to(self.device)
cluster_centers = bboxes[cluster_center_idx]
if self.num_anchors == 1:
cluster_centers = self.kmeans_maximization(bboxes, assignments,
cluster_centers)
anchors = bbox_xyxy_to_cxcywh(cluster_centers)[:, 2:].cpu().numpy()
anchors = sorted(anchors, key=lambda x: x[0] * x[1])
return anchors
prog_bar = mmcv.ProgressBar(self.iters)
for i in range(self.iters):
converged, assignments = self.kmeans_expectation(
bboxes, assignments, cluster_centers)
if converged:
self.logger.info(f'K-means process has converged at iter {i}.')
break
cluster_centers = self.kmeans_maximization(bboxes, assignments,
cluster_centers)
prog_bar.update()
print('\n')
avg_iou = bbox_overlaps(bboxes,
cluster_centers).max(1)[0].mean().item()
anchors = bbox_xyxy_to_cxcywh(cluster_centers)[:, 2:].cpu().numpy()
anchors = sorted(anchors, key=lambda x: x[0] * x[1])
self.logger.info(f'Anchor cluster finish. Average IOU: {avg_iou}')
return anchors
def kmeans_maximization(self, bboxes, assignments, centers):
"""Maximization part of EM algorithm(Expectation-Maximization)"""
new_centers = torch.zeros_like(centers)
for i in range(centers.shape[0]):
mask = (assignments == i)
if mask.sum():
new_centers[i, :] = bboxes[mask].mean(0)
return new_centers
def kmeans_expectation(self, bboxes, assignments, centers):
"""Expectation part of EM algorithm(Expectation-Maximization)"""
ious = bbox_overlaps(bboxes, centers)
closest = ious.argmax(1)
converged = (closest == assignments).all()
return converged, closest
class YOLODEAnchorOptimizer(BaseAnchorOptimizer):
"""YOLO anchor optimizer using differential evolution algorithm.
Args:
num_anchors (int) : Number of anchors.
iters (int): Maximum iterations for k-means.
strategy (str): The differential evolution strategy to use.
Should be one of:
- 'best1bin'
- 'best1exp'
- 'rand1exp'
- 'randtobest1exp'
- 'currenttobest1exp'
- 'best2exp'
- 'rand2exp'
- 'randtobest1bin'
- 'currenttobest1bin'
- 'best2bin'
- 'rand2bin'
- 'rand1bin'
Default: 'best1bin'.
population_size (int): Total population size of evolution algorithm.
Default: 15.
convergence_thr (float): Tolerance for convergence, the
optimizing stops when ``np.std(pop) <= abs(convergence_thr)
+ convergence_thr * np.abs(np.mean(population_energies))``,
respectively. Default: 0.0001.
mutation (tuple[float]): Range of dithering randomly changes the
mutation constant. Default: (0.5, 1).
recombination (float): Recombination constant of crossover probability.
Default: 0.7.
"""
def __init__(self,
num_anchors,
iters,
strategy='best1bin',
population_size=15,
convergence_thr=0.0001,
mutation=(0.5, 1),
recombination=0.7,
**kwargs):
super(YOLODEAnchorOptimizer, self).__init__(**kwargs)
self.num_anchors = num_anchors
self.iters = iters
self.strategy = strategy
self.population_size = population_size
self.convergence_thr = convergence_thr
self.mutation = mutation
self.recombination = recombination
def optimize(self):
anchors = self.differential_evolution()
self.save_result(anchors, self.out_dir)
def differential_evolution(self):
bboxes = self.get_zero_center_bbox_tensor()
bounds = []
for i in range(self.num_anchors):
bounds.extend([(0, self.input_shape[0]), (0, self.input_shape[1])])
result = differential_evolution(
func=self.avg_iou_cost,
bounds=bounds,
args=(bboxes, ),
strategy=self.strategy,
maxiter=self.iters,
popsize=self.population_size,
tol=self.convergence_thr,
mutation=self.mutation,
recombination=self.recombination,
updating='immediate',
disp=True)
self.logger.info(
f'Anchor evolution finish. Average IOU: {1 - result.fun}')
anchors = [(w, h) for w, h in zip(result.x[::2], result.x[1::2])]
anchors = sorted(anchors, key=lambda x: x[0] * x[1])
return anchors
@staticmethod
def avg_iou_cost(anchor_params, bboxes):
assert len(anchor_params) % 2 == 0
anchor_whs = torch.tensor(
[[w, h]
for w, h in zip(anchor_params[::2], anchor_params[1::2])]).to(
bboxes.device, dtype=bboxes.dtype)
anchor_boxes = bbox_cxcywh_to_xyxy(
torch.cat([torch.zeros_like(anchor_whs), anchor_whs], dim=1))
ious = bbox_overlaps(bboxes, anchor_boxes)
max_ious, _ = ious.max(1)
cost = 1 - max_ious.mean().item()
return cost
def main():
logger = get_root_logger()
args = parse_args()
cfg = args.config
cfg = Config.fromfile(cfg)
# replace the ${key} with the value of cfg.key
cfg = replace_cfg_vals(cfg)
# update data root according to MMDET_DATASETS
update_data_root(cfg)
input_shape = args.input_shape
assert len(input_shape) == 2
anchor_type = cfg.model.bbox_head.anchor_generator.type
assert anchor_type == 'YOLOAnchorGenerator', \
f'Only support optimize YOLOAnchor, but get {anchor_type}.'
base_sizes = cfg.model.bbox_head.anchor_generator.base_sizes
num_anchors = sum([len(sizes) for sizes in base_sizes])
train_data_cfg = cfg.data.train
while 'dataset' in train_data_cfg:
train_data_cfg = train_data_cfg['dataset']
dataset = build_dataset(train_data_cfg)
if args.algorithm == 'k-means':
optimizer = YOLOKMeansAnchorOptimizer(
dataset=dataset,
input_shape=input_shape,
device=args.device,
num_anchors=num_anchors,
iters=args.iters,
logger=logger,
out_dir=args.output_dir)
elif args.algorithm == 'differential_evolution':
optimizer = YOLODEAnchorOptimizer(
dataset=dataset,
input_shape=input_shape,
device=args.device,
num_anchors=num_anchors,
iters=args.iters,
logger=logger,
out_dir=args.output_dir)
else:
raise NotImplementedError(
f'Only support k-means and differential_evolution, '
f'but get {args.algorithm}')
optimizer.optimize()
if __name__ == '__main__':
main()