| | """Helper for evaluation on the Labeled Faces in the Wild dataset |
| | """ |
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|
| | import datetime |
| | import os |
| | import pickle |
| |
|
| | import mxnet as mx |
| | import numpy as np |
| | import sklearn |
| | import torch |
| | from mxnet import ndarray as nd |
| | from scipy import interpolate |
| | from sklearn.decomposition import PCA |
| | from sklearn.model_selection import KFold |
| |
|
| |
|
| | class LFold: |
| | def __init__(self, n_splits=2, shuffle=False): |
| | self.n_splits = n_splits |
| | if self.n_splits > 1: |
| | self.k_fold = KFold(n_splits=n_splits, shuffle=shuffle) |
| |
|
| | def split(self, indices): |
| | if self.n_splits > 1: |
| | return self.k_fold.split(indices) |
| | else: |
| | return [(indices, indices)] |
| |
|
| |
|
| | def calculate_roc(thresholds, |
| | embeddings1, |
| | embeddings2, |
| | actual_issame, |
| | nrof_folds=10, |
| | pca=0): |
| | assert (embeddings1.shape[0] == embeddings2.shape[0]) |
| | assert (embeddings1.shape[1] == embeddings2.shape[1]) |
| | nrof_pairs = min(len(actual_issame), embeddings1.shape[0]) |
| | nrof_thresholds = len(thresholds) |
| | k_fold = LFold(n_splits=nrof_folds, shuffle=False) |
| |
|
| | tprs = np.zeros((nrof_folds, nrof_thresholds)) |
| | fprs = np.zeros((nrof_folds, nrof_thresholds)) |
| | accuracy = np.zeros((nrof_folds)) |
| | indices = np.arange(nrof_pairs) |
| |
|
| | if pca == 0: |
| | diff = np.subtract(embeddings1, embeddings2) |
| | dist = np.sum(np.square(diff), 1) |
| |
|
| | for fold_idx, (train_set, test_set) in enumerate(k_fold.split(indices)): |
| | if pca > 0: |
| | print('doing pca on', fold_idx) |
| | embed1_train = embeddings1[train_set] |
| | embed2_train = embeddings2[train_set] |
| | _embed_train = np.concatenate((embed1_train, embed2_train), axis=0) |
| | pca_model = PCA(n_components=pca) |
| | pca_model.fit(_embed_train) |
| | embed1 = pca_model.transform(embeddings1) |
| | embed2 = pca_model.transform(embeddings2) |
| | embed1 = sklearn.preprocessing.normalize(embed1) |
| | embed2 = sklearn.preprocessing.normalize(embed2) |
| | diff = np.subtract(embed1, embed2) |
| | dist = np.sum(np.square(diff), 1) |
| |
|
| | |
| | acc_train = np.zeros((nrof_thresholds)) |
| | for threshold_idx, threshold in enumerate(thresholds): |
| | _, _, acc_train[threshold_idx] = calculate_accuracy( |
| | threshold, dist[train_set], actual_issame[train_set]) |
| | best_threshold_index = np.argmax(acc_train) |
| | for threshold_idx, threshold in enumerate(thresholds): |
| | tprs[fold_idx, threshold_idx], fprs[fold_idx, threshold_idx], _ = calculate_accuracy( |
| | threshold, dist[test_set], |
| | actual_issame[test_set]) |
| | _, _, accuracy[fold_idx] = calculate_accuracy( |
| | thresholds[best_threshold_index], dist[test_set], |
| | actual_issame[test_set]) |
| |
|
| | tpr = np.mean(tprs, 0) |
| | fpr = np.mean(fprs, 0) |
| | return tpr, fpr, accuracy |
| |
|
| |
|
| | def calculate_accuracy(threshold, dist, actual_issame): |
| | predict_issame = np.less(dist, threshold) |
| | tp = np.sum(np.logical_and(predict_issame, actual_issame)) |
| | fp = np.sum(np.logical_and(predict_issame, np.logical_not(actual_issame))) |
| | tn = np.sum( |
| | np.logical_and(np.logical_not(predict_issame), |
| | np.logical_not(actual_issame))) |
| | fn = np.sum(np.logical_and(np.logical_not(predict_issame), actual_issame)) |
| |
|
| | tpr = 0 if (tp + fn == 0) else float(tp) / float(tp + fn) |
| | fpr = 0 if (fp + tn == 0) else float(fp) / float(fp + tn) |
| | acc = float(tp + tn) / dist.size |
| | return tpr, fpr, acc |
| |
|
| |
|
| | def calculate_val(thresholds, |
| | embeddings1, |
| | embeddings2, |
| | actual_issame, |
| | far_target, |
| | nrof_folds=10): |
| | assert (embeddings1.shape[0] == embeddings2.shape[0]) |
| | assert (embeddings1.shape[1] == embeddings2.shape[1]) |
| | nrof_pairs = min(len(actual_issame), embeddings1.shape[0]) |
| | nrof_thresholds = len(thresholds) |
| | k_fold = LFold(n_splits=nrof_folds, shuffle=False) |
| |
|
| | val = np.zeros(nrof_folds) |
| | far = np.zeros(nrof_folds) |
| |
|
| | diff = np.subtract(embeddings1, embeddings2) |
| | dist = np.sum(np.square(diff), 1) |
| | indices = np.arange(nrof_pairs) |
| |
|
| | for fold_idx, (train_set, test_set) in enumerate(k_fold.split(indices)): |
| |
|
| | |
| | far_train = np.zeros(nrof_thresholds) |
| | for threshold_idx, threshold in enumerate(thresholds): |
| | _, far_train[threshold_idx] = calculate_val_far( |
| | threshold, dist[train_set], actual_issame[train_set]) |
| | if np.max(far_train) >= far_target: |
| | f = interpolate.interp1d(far_train, thresholds, kind='slinear') |
| | threshold = f(far_target) |
| | else: |
| | threshold = 0.0 |
| |
|
| | val[fold_idx], far[fold_idx] = calculate_val_far( |
| | threshold, dist[test_set], actual_issame[test_set]) |
| |
|
| | val_mean = np.mean(val) |
| | far_mean = np.mean(far) |
| | val_std = np.std(val) |
| | return val_mean, val_std, far_mean |
| |
|
| |
|
| | def calculate_val_far(threshold, dist, actual_issame): |
| | predict_issame = np.less(dist, threshold) |
| | true_accept = np.sum(np.logical_and(predict_issame, actual_issame)) |
| | false_accept = np.sum( |
| | np.logical_and(predict_issame, np.logical_not(actual_issame))) |
| | n_same = np.sum(actual_issame) |
| | n_diff = np.sum(np.logical_not(actual_issame)) |
| | |
| | |
| | val = float(true_accept) / float(n_same) |
| | far = float(false_accept) / float(n_diff) |
| | return val, far |
| |
|
| |
|
| | def evaluate(embeddings, actual_issame, nrof_folds=10, pca=0): |
| | |
| | thresholds = np.arange(0, 4, 0.01) |
| | embeddings1 = embeddings[0::2] |
| | embeddings2 = embeddings[1::2] |
| | tpr, fpr, accuracy = calculate_roc(thresholds, |
| | embeddings1, |
| | embeddings2, |
| | np.asarray(actual_issame), |
| | nrof_folds=nrof_folds, |
| | pca=pca) |
| | thresholds = np.arange(0, 4, 0.001) |
| | val, val_std, far = calculate_val(thresholds, |
| | embeddings1, |
| | embeddings2, |
| | np.asarray(actual_issame), |
| | 1e-3, |
| | nrof_folds=nrof_folds) |
| | return tpr, fpr, accuracy, val, val_std, far |
| |
|
| | @torch.no_grad() |
| | def load_bin(path, image_size): |
| | try: |
| | with open(path, 'rb') as f: |
| | bins, issame_list = pickle.load(f) |
| | except UnicodeDecodeError as e: |
| | with open(path, 'rb') as f: |
| | bins, issame_list = pickle.load(f, encoding='bytes') |
| | data_list = [] |
| | for flip in [0, 1]: |
| | data = torch.empty((len(issame_list) * 2, 3, image_size[0], image_size[1])) |
| | data_list.append(data) |
| | for idx in range(len(issame_list) * 2): |
| | _bin = bins[idx] |
| | img = mx.image.imdecode(_bin) |
| | if img.shape[1] != image_size[0]: |
| | img = mx.image.resize_short(img, image_size[0]) |
| | img = nd.transpose(img, axes=(2, 0, 1)) |
| | for flip in [0, 1]: |
| | if flip == 1: |
| | img = mx.ndarray.flip(data=img, axis=2) |
| | data_list[flip][idx][:] = torch.from_numpy(img.asnumpy()) |
| | if idx % 1000 == 0: |
| | print('loading bin', idx) |
| | print(data_list[0].shape) |
| | return data_list, issame_list |
| |
|
| | @torch.no_grad() |
| | def test(data_set, backbone, batch_size, nfolds=10): |
| | print('testing verification..') |
| | data_list = data_set[0] |
| | issame_list = data_set[1] |
| | embeddings_list = [] |
| | time_consumed = 0.0 |
| | for i in range(len(data_list)): |
| | data = data_list[i] |
| | embeddings = None |
| | ba = 0 |
| | while ba < data.shape[0]: |
| | bb = min(ba + batch_size, data.shape[0]) |
| | count = bb - ba |
| | _data = data[bb - batch_size: bb] |
| | time0 = datetime.datetime.now() |
| | img = ((_data / 255) - 0.5) / 0.5 |
| | net_out: torch.Tensor = backbone(img) |
| | _embeddings = net_out.detach().cpu().numpy() |
| | time_now = datetime.datetime.now() |
| | diff = time_now - time0 |
| | time_consumed += diff.total_seconds() |
| | if embeddings is None: |
| | embeddings = np.zeros((data.shape[0], _embeddings.shape[1])) |
| | embeddings[ba:bb, :] = _embeddings[(batch_size - count):, :] |
| | ba = bb |
| | embeddings_list.append(embeddings) |
| |
|
| | _xnorm = 0.0 |
| | _xnorm_cnt = 0 |
| | for embed in embeddings_list: |
| | for i in range(embed.shape[0]): |
| | _em = embed[i] |
| | _norm = np.linalg.norm(_em) |
| | _xnorm += _norm |
| | _xnorm_cnt += 1 |
| | _xnorm /= _xnorm_cnt |
| |
|
| | acc1 = 0.0 |
| | std1 = 0.0 |
| | embeddings = embeddings_list[0] + embeddings_list[1] |
| | embeddings = sklearn.preprocessing.normalize(embeddings) |
| | print(embeddings.shape) |
| | print('infer time', time_consumed) |
| | _, _, accuracy, val, val_std, far = evaluate(embeddings, issame_list, nrof_folds=nfolds) |
| | acc2, std2 = np.mean(accuracy), np.std(accuracy) |
| | return acc1, std1, acc2, std2, _xnorm, embeddings_list |
| |
|
| |
|
| | def dumpR(data_set, |
| | backbone, |
| | batch_size, |
| | name='', |
| | data_extra=None, |
| | label_shape=None): |
| | print('dump verification embedding..') |
| | data_list = data_set[0] |
| | issame_list = data_set[1] |
| | embeddings_list = [] |
| | time_consumed = 0.0 |
| | for i in range(len(data_list)): |
| | data = data_list[i] |
| | embeddings = None |
| | ba = 0 |
| | while ba < data.shape[0]: |
| | bb = min(ba + batch_size, data.shape[0]) |
| | count = bb - ba |
| |
|
| | _data = nd.slice_axis(data, axis=0, begin=bb - batch_size, end=bb) |
| | time0 = datetime.datetime.now() |
| | if data_extra is None: |
| | db = mx.io.DataBatch(data=(_data,), label=(_label,)) |
| | else: |
| | db = mx.io.DataBatch(data=(_data, _data_extra), |
| | label=(_label,)) |
| | model.forward(db, is_train=False) |
| | net_out = model.get_outputs() |
| | _embeddings = net_out[0].asnumpy() |
| | time_now = datetime.datetime.now() |
| | diff = time_now - time0 |
| | time_consumed += diff.total_seconds() |
| | if embeddings is None: |
| | embeddings = np.zeros((data.shape[0], _embeddings.shape[1])) |
| | embeddings[ba:bb, :] = _embeddings[(batch_size - count):, :] |
| | ba = bb |
| | embeddings_list.append(embeddings) |
| | embeddings = embeddings_list[0] + embeddings_list[1] |
| | embeddings = sklearn.preprocessing.normalize(embeddings) |
| | actual_issame = np.asarray(issame_list) |
| | outname = os.path.join('temp.bin') |
| | with open(outname, 'wb') as f: |
| | pickle.dump((embeddings, issame_list), |
| | f, |
| | protocol=pickle.HIGHEST_PROTOCOL) |
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