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generate_detections.py
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generate_detections.py
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# vim: expandtab:ts=4:sw=4
import os
import errno
import argparse
import numpy as np
import cv2
import tensorflow as tf
import tensorflow.contrib.slim as slim
def _batch_norm_fn(x, scope=None):
if scope is None:
scope = tf.get_variable_scope().name + "/bn"
return slim.batch_norm(x, scope=scope)
def create_link(
incoming, network_builder, scope, nonlinearity=tf.nn.elu,
weights_initializer=tf.truncated_normal_initializer(stddev=1e-3),
regularizer=None, is_first=False, summarize_activations=True):
if is_first:
network = incoming
else:
network = _batch_norm_fn(incoming, scope=scope + "/bn")
network = nonlinearity(network)
if summarize_activations:
tf.summary.histogram(scope+"/activations", network)
pre_block_network = network
post_block_network = network_builder(pre_block_network, scope)
incoming_dim = pre_block_network.get_shape().as_list()[-1]
outgoing_dim = post_block_network.get_shape().as_list()[-1]
if incoming_dim != outgoing_dim:
assert outgoing_dim == 2 * incoming_dim, \
"%d != %d" % (outgoing_dim, 2 * incoming)
projection = slim.conv2d(
incoming, outgoing_dim, 1, 2, padding="SAME", activation_fn=None,
scope=scope+"/projection", weights_initializer=weights_initializer,
biases_initializer=None, weights_regularizer=regularizer)
network = projection + post_block_network
else:
network = incoming + post_block_network
return network
def create_inner_block(
incoming, scope, nonlinearity=tf.nn.elu,
weights_initializer=tf.truncated_normal_initializer(1e-3),
bias_initializer=tf.zeros_initializer(), regularizer=None,
increase_dim=False, summarize_activations=True):
n = incoming.get_shape().as_list()[-1]
stride = 1
if increase_dim:
n *= 2
stride = 2
incoming = slim.conv2d(
incoming, n, [3, 3], stride, activation_fn=nonlinearity, padding="SAME",
normalizer_fn=_batch_norm_fn, weights_initializer=weights_initializer,
biases_initializer=bias_initializer, weights_regularizer=regularizer,
scope=scope + "/1")
if summarize_activations:
tf.summary.histogram(incoming.name + "/activations", incoming)
incoming = slim.dropout(incoming, keep_prob=0.6)
incoming = slim.conv2d(
incoming, n, [3, 3], 1, activation_fn=None, padding="SAME",
normalizer_fn=None, weights_initializer=weights_initializer,
biases_initializer=bias_initializer, weights_regularizer=regularizer,
scope=scope + "/2")
return incoming
def residual_block(incoming, scope, nonlinearity=tf.nn.elu,
weights_initializer=tf.truncated_normal_initializer(1e3),
bias_initializer=tf.zeros_initializer(), regularizer=None,
increase_dim=False, is_first=False,
summarize_activations=True):
def network_builder(x, s):
return create_inner_block(
x, s, nonlinearity, weights_initializer, bias_initializer,
regularizer, increase_dim, summarize_activations)
return create_link(
incoming, network_builder, scope, nonlinearity, weights_initializer,
regularizer, is_first, summarize_activations)
def _create_network(incoming, num_classes, reuse=None, l2_normalize=True,
create_summaries=True, weight_decay=1e-8):
nonlinearity = tf.nn.elu
conv_weight_init = tf.truncated_normal_initializer(stddev=1e-3)
conv_bias_init = tf.zeros_initializer()
conv_regularizer = slim.l2_regularizer(weight_decay)
fc_weight_init = tf.truncated_normal_initializer(stddev=1e-3)
fc_bias_init = tf.zeros_initializer()
fc_regularizer = slim.l2_regularizer(weight_decay)
def batch_norm_fn(x):
return slim.batch_norm(x, scope=tf.get_variable_scope().name + "/bn")
network = incoming
network = slim.conv2d(
network, 32, [3, 3], stride=1, activation_fn=nonlinearity,
padding="SAME", normalizer_fn=batch_norm_fn, scope="conv1_1",
weights_initializer=conv_weight_init, biases_initializer=conv_bias_init,
weights_regularizer=conv_regularizer)
if create_summaries:
tf.summary.histogram(network.name + "/activations", network)
tf.summary.image("conv1_1/weights", tf.transpose(
slim.get_variables("conv1_1/weights:0")[0], [3, 0, 1, 2]),
max_images=128)
network = slim.conv2d(
network, 32, [3, 3], stride=1, activation_fn=nonlinearity,
padding="SAME", normalizer_fn=batch_norm_fn, scope="conv1_2",
weights_initializer=conv_weight_init, biases_initializer=conv_bias_init,
weights_regularizer=conv_regularizer)
if create_summaries:
tf.summary.histogram(network.name + "/activations", network)
# NOTE(nwojke): This is missing a padding="SAME" to match the CNN
# architecture in Table 1 of the paper. Information on how this affects
# performance on MOT 16 training sequences can be found in
# issue 10 https://github.com/nwojke/deep_sort/issues/10
network = slim.max_pool2d(network, [3, 3], [2, 2], scope="pool1")
network = residual_block(
network, "conv2_1", nonlinearity, conv_weight_init, conv_bias_init,
conv_regularizer, increase_dim=False, is_first=True,
summarize_activations=create_summaries)
network = residual_block(
network, "conv2_3", nonlinearity, conv_weight_init, conv_bias_init,
conv_regularizer, increase_dim=False,
summarize_activations=create_summaries)
network = residual_block(
network, "conv3_1", nonlinearity, conv_weight_init, conv_bias_init,
conv_regularizer, increase_dim=True,
summarize_activations=create_summaries)
network = residual_block(
network, "conv3_3", nonlinearity, conv_weight_init, conv_bias_init,
conv_regularizer, increase_dim=False,
summarize_activations=create_summaries)
network = residual_block(
network, "conv4_1", nonlinearity, conv_weight_init, conv_bias_init,
conv_regularizer, increase_dim=True,
summarize_activations=create_summaries)
network = residual_block(
network, "conv4_3", nonlinearity, conv_weight_init, conv_bias_init,
conv_regularizer, increase_dim=False,
summarize_activations=create_summaries)
feature_dim = network.get_shape().as_list()[-1]
print("feature dimensionality: ", feature_dim)
network = slim.flatten(network)
network = slim.dropout(network, keep_prob=0.6)
network = slim.fully_connected(
network, feature_dim, activation_fn=nonlinearity,
normalizer_fn=batch_norm_fn, weights_regularizer=fc_regularizer,
scope="fc1", weights_initializer=fc_weight_init,
biases_initializer=fc_bias_init)
features = network
if l2_normalize:
# Features in rows, normalize axis 1.
features = slim.batch_norm(features, scope="ball", reuse=reuse)
feature_norm = tf.sqrt(
tf.constant(1e-8, tf.float32) +
tf.reduce_sum(tf.square(features), [1], keep_dims=True))
features = features / feature_norm
with slim.variable_scope.variable_scope("ball", reuse=reuse):
weights = slim.model_variable(
"mean_vectors", (feature_dim, num_classes),
initializer=tf.truncated_normal_initializer(stddev=1e-3),
regularizer=None)
scale = slim.model_variable(
"scale", (num_classes, ), tf.float32,
tf.constant_initializer(0., tf.float32), regularizer=None)
if create_summaries:
tf.summary.histogram("scale", scale)
# scale = slim.model_variable(
# "scale", (), tf.float32,
# initializer=tf.constant_initializer(0., tf.float32),
# regularizer=slim.l2_regularizer(1e-2))
# if create_summaries:
# tf.scalar_summary("scale", scale)
scale = tf.nn.softplus(scale)
# Each mean vector in columns, normalize axis 0.
weight_norm = tf.sqrt(
tf.constant(1e-8, tf.float32) +
tf.reduce_sum(tf.square(weights), [0], keep_dims=True))
logits = scale * tf.matmul(features, weights / weight_norm)
else:
logits = slim.fully_connected(
features, num_classes, activation_fn=None,
normalizer_fn=None, weights_regularizer=fc_regularizer,
scope="softmax", weights_initializer=fc_weight_init,
biases_initializer=fc_bias_init)
return features, logits
def _network_factory(num_classes, is_training, weight_decay=1e-8):
def factory_fn(image, reuse, l2_normalize):
with slim.arg_scope([slim.batch_norm, slim.dropout],
is_training=is_training):
with slim.arg_scope([slim.conv2d, slim.fully_connected,
slim.batch_norm, slim.layer_norm],
reuse=reuse):
features, logits = _create_network(
image, num_classes, l2_normalize=l2_normalize,
reuse=reuse, create_summaries=is_training,
weight_decay=weight_decay)
return features, logits
return factory_fn
def _preprocess(image, is_training=False, enable_more_augmentation=True):
image = image[:, :, ::-1] # BGR to RGB
if is_training:
image = tf.image.random_flip_left_right(image)
if enable_more_augmentation:
image = tf.image.random_brightness(image, max_delta=50)
image = tf.image.random_contrast(image, lower=0.8, upper=1.2)
image = tf.image.random_saturation(image, lower=0.8, upper=1.2)
return image
def _run_in_batches(f, data_dict, out, batch_size):
data_len = len(out)
num_batches = int(data_len / batch_size)
s, e = 0, 0
for i in range(num_batches):
s, e = i * batch_size, (i + 1) * batch_size
batch_data_dict = {k: v[s:e] for k, v in data_dict.items()}
out[s:e] = f(batch_data_dict)
if e < len(out):
batch_data_dict = {k: v[e:] for k, v in data_dict.items()}
out[e:] = f(batch_data_dict)
def extract_image_patch(image, bbox, patch_shape):
"""Extract image patch from bounding box.
Parameters
----------
image : ndarray
The full image.
bbox : array_like
The bounding box in format (x, y, width, height).
patch_shape : Optional[array_like]
This parameter can be used to enforce a desired patch shape
(height, width). First, the `bbox` is adapted to the aspect ratio
of the patch shape, then it is clipped at the image boundaries.
If None, the shape is computed from :arg:`bbox`.
Returns
-------
ndarray | NoneType
An image patch showing the :arg:`bbox`, optionally reshaped to
:arg:`patch_shape`.
Returns None if the bounding box is empty or fully outside of the image
boundaries.
"""
bbox = np.array(bbox)
if patch_shape is not None:
# correct aspect ratio to patch shape
target_aspect = float(patch_shape[1]) / patch_shape[0]
new_width = target_aspect * bbox[3]
bbox[0] -= (new_width - bbox[2]) / 2
bbox[2] = new_width
# convert to top left, bottom right
bbox[2:] += bbox[:2]
bbox = bbox.astype(np.int)
# clip at image boundaries
bbox[:2] = np.maximum(0, bbox[:2])
bbox[2:] = np.minimum(np.asarray(image.shape[:2][::-1]) - 1, bbox[2:])
if np.any(bbox[:2] >= bbox[2:]):
return None
sx, sy, ex, ey = bbox
image = image[sy:ey, sx:ex]
image = cv2.resize(image, patch_shape[::-1])
return image
def _create_image_encoder(preprocess_fn, factory_fn, image_shape, batch_size=32,
session=None, checkpoint_path=None,
loss_mode="cosine"):
image_var = tf.placeholder(tf.uint8, (None, ) + image_shape)
preprocessed_image_var = tf.map_fn(
lambda x: preprocess_fn(x, is_training=False),
tf.cast(image_var, tf.float32))
l2_normalize = loss_mode == "cosine"
feature_var, _ = factory_fn(
preprocessed_image_var, l2_normalize=l2_normalize, reuse=None)
feature_dim = feature_var.get_shape().as_list()[-1]
if session is None:
session = tf.Session()
if checkpoint_path is not None:
slim.get_or_create_global_step()
init_assign_op, init_feed_dict = slim.assign_from_checkpoint(
checkpoint_path, slim.get_variables_to_restore())
session.run(init_assign_op, feed_dict=init_feed_dict)
def encoder(data_x):
out = np.zeros((len(data_x), feature_dim), np.float32)
_run_in_batches(
lambda x: session.run(feature_var, feed_dict=x),
{image_var: data_x}, out, batch_size)
return out
return encoder
def create_image_encoder(model_filename, batch_size=32, loss_mode="cosine",
session=None):
image_shape = 128, 64, 3
factory_fn = _network_factory(
num_classes=1501, is_training=False, weight_decay=1e-8)
return _create_image_encoder(
_preprocess, factory_fn, image_shape, batch_size, session,
model_filename, loss_mode)
def create_box_encoder(model_filename, batch_size=32, loss_mode="cosine"):
image_shape = 128, 64, 3
image_encoder = create_image_encoder(model_filename, batch_size, loss_mode)
def encoder(image, boxes):
image_patches = []
for box in boxes:
patch = extract_image_patch(image, box, image_shape[:2])
if patch is None:
print("WARNING: Failed to extract image patch: %s." % str(box))
patch = np.random.uniform(
0., 255., image_shape).astype(np.uint8)
image_patches.append(patch)
image_patches = np.asarray(image_patches)
return image_encoder(image_patches)
return encoder
def generate_detections(encoder, mot_dir, output_dir, detection_dir=None):
"""Generate detections with features.
Parameters
----------
encoder : Callable[image, ndarray] -> ndarray
The encoder function takes as input a BGR color image and a matrix of
bounding boxes in format `(x, y, w, h)` and returns a matrix of
corresponding feature vectors.
mot_dir : str
Path to the MOTChallenge directory (can be either train or test).
output_dir
Path to the output directory. Will be created if it does not exist.
detection_dir
Path to custom detections. The directory structure should be the default
MOTChallenge structure: `[sequence]/det/det.txt`. If None, uses the
standard MOTChallenge detections.
"""
if detection_dir is None:
detection_dir = mot_dir
try:
os.makedirs(output_dir)
except OSError as exception:
if exception.errno == errno.EEXIST and os.path.isdir(output_dir):
pass
else:
raise ValueError(
"Failed to created output directory '%s'" % output_dir)
for sequence in os.listdir(mot_dir):
print("Processing %s" % sequence)
sequence_dir = os.path.join(mot_dir, sequence)
image_dir = os.path.join(sequence_dir, "img1")
image_filenames = {
int(os.path.splitext(f)[0]): os.path.join(image_dir, f)
for f in os.listdir(image_dir)}
detection_file = os.path.join(
detection_dir, sequence, "det/det.txt")
detections_in = np.loadtxt(detection_file, delimiter=',')
detections_out = []
frame_indices = detections_in[:, 0].astype(np.int)
min_frame_idx = frame_indices.astype(np.int).min()
max_frame_idx = frame_indices.astype(np.int).max()
for frame_idx in range(min_frame_idx, max_frame_idx + 1):
print("Frame %05d/%05d" % (frame_idx, max_frame_idx))
mask = frame_indices == frame_idx
rows = detections_in[mask]
if frame_idx not in image_filenames:
print("WARNING could not find image for frame %d" % frame_idx)
continue
bgr_image = cv2.imread(
image_filenames[frame_idx], cv2.IMREAD_COLOR)
features = encoder(bgr_image, rows[:, 2:6].copy())
detections_out += [np.r_[(row, feature)] for row, feature
in zip(rows, features)]
output_filename = os.path.join(output_dir, "%s.npy" % sequence)
np.save(
output_filename, np.asarray(detections_out), allow_pickle=False)
def parse_args():
"""Parse command line arguments.
"""
parser = argparse.ArgumentParser(description="Re-ID feature extractor")
parser.add_argument(
"--model",
default="resources/networks/mars-small128.ckpt-68577",
help="Path to checkpoint file")
parser.add_argument(
"--loss_mode", default="cosine", help="Network loss training mode")
parser.add_argument(
"--mot_dir", help="Path to MOTChallenge directory (train or test)",
required=True)
parser.add_argument(
"--detection_dir", help="Path to custom detections. Defaults to "
"standard MOT detections Directory structure should be the default "
"MOTChallenge structure: [sequence]/det/det.txt", default=None)
parser.add_argument(
"--output_dir", help="Output directory. Will be created if it does not"
" exist.", default="detections")
return parser.parse_args()
if __name__ == "__main__":
args = parse_args()
f = create_box_encoder(args.model, batch_size=32, loss_mode=args.loss_mode)
generate_detections(f, args.mot_dir, args.output_dir, args.detection_dir)