Files
openvino/inference-engine/ie_bridges/python/sample/classification_sample/classification_sample.py

135 lines
6.1 KiB
Python
Raw Normal View History

2018-10-16 13:45:03 +03:00
#!/usr/bin/env python
"""
2020-02-11 22:48:49 +03:00
Copyright (C) 2018-2020 Intel Corporation
2018-10-16 13:45:03 +03:00
Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License.
"""
from __future__ import print_function
import sys
import os
2019-04-12 18:25:53 +03:00
from argparse import ArgumentParser, SUPPRESS
2018-10-16 13:45:03 +03:00
import cv2
import numpy as np
import logging as log
2020-04-13 21:17:23 +03:00
from openvino.inference_engine import IECore
2018-10-16 13:45:03 +03:00
def build_argparser():
2019-04-12 18:25:53 +03:00
parser = ArgumentParser(add_help=False)
args = parser.add_argument_group('Options')
args.add_argument('-h', '--help', action='help', default=SUPPRESS, help='Show this help message and exit.')
args.add_argument("-m", "--model", help="Required. Path to an .xml file with a trained model.", required=True,
type=str)
args.add_argument("-i", "--input", help="Required. Path to a folder with images or path to an image files",
required=True,
type=str, nargs="+")
args.add_argument("-l", "--cpu_extension",
help="Optional. Required for CPU custom layers. "
"MKLDNN (CPU)-targeted custom layers. Absolute path to a shared library with the"
" kernels implementations.", type=str, default=None)
args.add_argument("-d", "--device",
help="Optional. Specify the target device to infer on; CPU, GPU, FPGA, HDDL, MYRIAD or HETERO: is "
"acceptable. The sample will look for a suitable plugin for device specified. Default "
"value is CPU",
default="CPU", type=str)
args.add_argument("--labels", help="Optional. Path to a labels mapping file", default=None, type=str)
args.add_argument("-nt", "--number_top", help="Optional. Number of top results", default=10, type=int)
2018-10-16 13:45:03 +03:00
return parser
def main():
log.basicConfig(format="[ %(levelname)s ] %(message)s", level=log.INFO, stream=sys.stdout)
args = build_argparser().parse_args()
model_xml = args.model
model_bin = os.path.splitext(model_xml)[0] + ".bin"
# Plugin initialization for specified device and load extensions library if specified
2019-08-09 19:02:42 +03:00
log.info("Creating Inference Engine")
ie = IECore()
2018-10-16 13:45:03 +03:00
if args.cpu_extension and 'CPU' in args.device:
2019-08-09 19:02:42 +03:00
ie.add_extension(args.cpu_extension, "CPU")
2018-10-16 13:45:03 +03:00
# Read IR
log.info("Loading network files:\n\t{}\n\t{}".format(model_xml, model_bin))
2020-04-13 21:17:23 +03:00
net = ie.read_network(model=model_xml, weights=model_bin)
2018-10-16 13:45:03 +03:00
2019-08-09 19:02:42 +03:00
if "CPU" in args.device:
supported_layers = ie.query_network(net, "CPU")
2018-10-16 13:45:03 +03:00
not_supported_layers = [l for l in net.layers.keys() if l not in supported_layers]
if len(not_supported_layers) != 0:
log.error("Following layers are not supported by the plugin for specified device {}:\n {}".
2019-08-09 19:02:42 +03:00
format(args.device, ', '.join(not_supported_layers)))
2018-10-16 13:45:03 +03:00
log.error("Please try to specify cpu extensions library path in sample's command line parameters using -l "
"or --cpu_extension command line argument")
sys.exit(1)
assert len(net.inputs.keys()) == 1, "Sample supports only single input topologies"
assert len(net.outputs) == 1, "Sample supports only single output topologies"
log.info("Preparing input blobs")
input_blob = next(iter(net.inputs))
out_blob = next(iter(net.outputs))
net.batch_size = len(args.input)
# Read and pre-process input images
2018-11-23 16:19:43 +03:00
n, c, h, w = net.inputs[input_blob].shape
2018-10-16 13:45:03 +03:00
images = np.ndarray(shape=(n, c, h, w))
for i in range(n):
image = cv2.imread(args.input[i])
if image.shape[:-1] != (h, w):
log.warning("Image {} is resized from {} to {}".format(args.input[i], image.shape[:-1], (h, w)))
image = cv2.resize(image, (w, h))
image = image.transpose((2, 0, 1)) # Change data layout from HWC to CHW
images[i] = image
log.info("Batch size is {}".format(n))
# Loading model to the plugin
log.info("Loading model to the plugin")
2019-08-09 19:02:42 +03:00
exec_net = ie.load_network(network=net, device_name=args.device)
2018-10-16 13:45:03 +03:00
# Start sync inference
2019-08-09 19:02:42 +03:00
log.info("Starting inference in synchronous mode")
res = exec_net.infer(inputs={input_blob: images})
2018-10-16 13:45:03 +03:00
# Processing output blob
log.info("Processing output blob")
res = res[out_blob]
log.info("Top {} results: ".format(args.number_top))
if args.labels:
with open(args.labels, 'r') as f:
labels_map = [x.split(sep=' ', maxsplit=1)[-1].strip() for x in f]
else:
labels_map = None
2019-04-12 18:25:53 +03:00
classid_str = "classid"
probability_str = "probability"
2018-10-16 13:45:03 +03:00
for i, probs in enumerate(res):
probs = np.squeeze(probs)
top_ind = np.argsort(probs)[-args.number_top:][::-1]
print("Image {}\n".format(args.input[i]))
2019-04-12 18:25:53 +03:00
print(classid_str, probability_str)
print("{} {}".format('-' * len(classid_str), '-' * len(probability_str)))
2018-10-16 13:45:03 +03:00
for id in top_ind:
2019-04-12 18:25:53 +03:00
det_label = labels_map[id] if labels_map else "{}".format(id)
label_length = len(det_label)
space_num_before = (len(classid_str) - label_length) // 2
space_num_after = len(classid_str) - (space_num_before + label_length) + 2
space_num_before_prob = (len(probability_str) - len(str(probs[id]))) // 2
print("{}{}{}{}{:.7f}".format(' ' * space_num_before, det_label,
' ' * space_num_after, ' ' * space_num_before_prob,
probs[id]))
2018-10-16 13:45:03 +03:00
print("\n")
2019-08-09 19:02:42 +03:00
log.info("This sample is an API example, for any performance measurements please use the dedicated benchmark_app tool\n")
2018-10-16 13:45:03 +03:00
if __name__ == '__main__':
sys.exit(main() or 0)