| |
| """ |
| AutoAnchor utils |
| """ |
|
|
| import random |
|
|
| import numpy as np |
| import torch |
| import yaml |
| from tqdm import tqdm |
|
|
| from utils import TryExcept |
| from utils.general import LOGGER, colorstr |
|
|
| PREFIX = colorstr('AutoAnchor: ') |
|
|
|
|
| def check_anchor_order(m): |
| |
| a = m.anchors.prod(-1).mean(-1).view(-1) |
| da = a[-1] - a[0] |
| ds = m.stride[-1] - m.stride[0] |
| if da and (da.sign() != ds.sign()): |
| LOGGER.info(f'{PREFIX}Reversing anchor order') |
| m.anchors[:] = m.anchors.flip(0) |
|
|
|
|
| @TryExcept(f'{PREFIX}ERROR') |
| def check_anchors(dataset, model, thr=4.0, imgsz=640): |
| |
| m = model.module.model[-1] if hasattr(model, 'module') else model.model[-1] |
| shapes = imgsz * dataset.shapes / dataset.shapes.max(1, keepdims=True) |
| scale = np.random.uniform(0.9, 1.1, size=(shapes.shape[0], 1)) |
| wh = torch.tensor(np.concatenate([l[:, 3:5] * s for s, l in zip(shapes * scale, dataset.labels)])).float() |
|
|
| def metric(k): |
| r = wh[:, None] / k[None] |
| x = torch.min(r, 1 / r).min(2)[0] |
| best = x.max(1)[0] |
| aat = (x > 1 / thr).float().sum(1).mean() |
| bpr = (best > 1 / thr).float().mean() |
| return bpr, aat |
|
|
| stride = m.stride.to(m.anchors.device).view(-1, 1, 1) |
| anchors = m.anchors.clone() * stride |
| bpr, aat = metric(anchors.cpu().view(-1, 2)) |
| s = f'\n{PREFIX}{aat:.2f} anchors/target, {bpr:.3f} Best Possible Recall (BPR). ' |
| if bpr > 0.98: |
| LOGGER.info(f'{s}Current anchors are a good fit to dataset ✅') |
| else: |
| LOGGER.info(f'{s}Anchors are a poor fit to dataset ⚠️, attempting to improve...') |
| na = m.anchors.numel() // 2 |
| anchors = kmean_anchors(dataset, n=na, img_size=imgsz, thr=thr, gen=1000, verbose=False) |
| new_bpr = metric(anchors)[0] |
| if new_bpr > bpr: |
| anchors = torch.tensor(anchors, device=m.anchors.device).type_as(m.anchors) |
| m.anchors[:] = anchors.clone().view_as(m.anchors) |
| check_anchor_order(m) |
| m.anchors /= stride |
| s = f'{PREFIX}Done ✅ (optional: update model *.yaml to use these anchors in the future)' |
| else: |
| s = f'{PREFIX}Done ⚠️ (original anchors better than new anchors, proceeding with original anchors)' |
| LOGGER.info(s) |
|
|
|
|
| def kmean_anchors(dataset='./data/coco128.yaml', n=9, img_size=640, thr=4.0, gen=1000, verbose=True): |
| """ Creates kmeans-evolved anchors from training dataset |
| |
| Arguments: |
| dataset: path to data.yaml, or a loaded dataset |
| n: number of anchors |
| img_size: image size used for training |
| thr: anchor-label wh ratio threshold hyperparameter hyp['anchor_t'] used for training, default=4.0 |
| gen: generations to evolve anchors using genetic algorithm |
| verbose: print all results |
| |
| Return: |
| k: kmeans evolved anchors |
| |
| Usage: |
| from utils.autoanchor import *; _ = kmean_anchors() |
| """ |
| from scipy.cluster.vq import kmeans |
|
|
| npr = np.random |
| thr = 1 / thr |
|
|
| def metric(k, wh): |
| r = wh[:, None] / k[None] |
| x = torch.min(r, 1 / r).min(2)[0] |
| |
| return x, x.max(1)[0] |
|
|
| def anchor_fitness(k): |
| _, best = metric(torch.tensor(k, dtype=torch.float32), wh) |
| return (best * (best > thr).float()).mean() |
|
|
| def print_results(k, verbose=True): |
| k = k[np.argsort(k.prod(1))] |
| x, best = metric(k, wh0) |
| bpr, aat = (best > thr).float().mean(), (x > thr).float().mean() * n |
| s = f'{PREFIX}thr={thr:.2f}: {bpr:.4f} best possible recall, {aat:.2f} anchors past thr\n' \ |
| f'{PREFIX}n={n}, img_size={img_size}, metric_all={x.mean():.3f}/{best.mean():.3f}-mean/best, ' \ |
| f'past_thr={x[x > thr].mean():.3f}-mean: ' |
| for x in k: |
| s += '%i,%i, ' % (round(x[0]), round(x[1])) |
| if verbose: |
| LOGGER.info(s[:-2]) |
| return k |
|
|
| if isinstance(dataset, str): |
| with open(dataset, errors='ignore') as f: |
| data_dict = yaml.safe_load(f) |
| from utils.dataloaders import LoadImagesAndLabels |
| dataset = LoadImagesAndLabels(data_dict['train'], augment=True, rect=True) |
|
|
| |
| shapes = img_size * dataset.shapes / dataset.shapes.max(1, keepdims=True) |
| wh0 = np.concatenate([l[:, 3:5] * s for s, l in zip(shapes, dataset.labels)]) |
|
|
| |
| i = (wh0 < 3.0).any(1).sum() |
| if i: |
| LOGGER.info(f'{PREFIX}WARNING ⚠️ Extremely small objects found: {i} of {len(wh0)} labels are <3 pixels in size') |
| wh = wh0[(wh0 >= 2.0).any(1)].astype(np.float32) |
| |
|
|
| |
| try: |
| LOGGER.info(f'{PREFIX}Running kmeans for {n} anchors on {len(wh)} points...') |
| assert n <= len(wh) |
| s = wh.std(0) |
| k = kmeans(wh / s, n, iter=30)[0] * s |
| assert n == len(k) |
| except Exception: |
| LOGGER.warning(f'{PREFIX}WARNING ⚠️ switching strategies from kmeans to random init') |
| k = np.sort(npr.rand(n * 2)).reshape(n, 2) * img_size |
| wh, wh0 = (torch.tensor(x, dtype=torch.float32) for x in (wh, wh0)) |
| k = print_results(k, verbose=False) |
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| f, sh, mp, s = anchor_fitness(k), k.shape, 0.9, 0.1 |
| pbar = tqdm(range(gen), bar_format='{l_bar}{bar:10}{r_bar}{bar:-10b}') |
| for _ in pbar: |
| v = np.ones(sh) |
| while (v == 1).all(): |
| v = ((npr.random(sh) < mp) * random.random() * npr.randn(*sh) * s + 1).clip(0.3, 3.0) |
| kg = (k.copy() * v).clip(min=2.0) |
| fg = anchor_fitness(kg) |
| if fg > f: |
| f, k = fg, kg.copy() |
| pbar.desc = f'{PREFIX}Evolving anchors with Genetic Algorithm: fitness = {f:.4f}' |
| if verbose: |
| print_results(k, verbose) |
|
|
| return print_results(k).astype(np.float32) |
|
|