module.py 12.3 KB
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# coding=utf-8
from __future__ import absolute_import

import ast
import argparse
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import os
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from functools import partial

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import yaml
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import numpy as np
import paddle.fluid as fluid
import paddlehub as hub
from paddle.fluid.core import PaddleTensor, AnalysisConfig, create_paddle_predictor
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from paddlehub.module.module import moduleinfo, runnable, serving
from paddlehub.common.paddle_helper import add_vars_prefix
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from ssd_vgg16_512_coco2017.vgg import VGG
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from ssd_vgg16_512_coco2017.processor import load_label_info, postprocess, base64_to_cv2
from ssd_vgg16_512_coco2017.data_feed import reader
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@moduleinfo(
    name="ssd_vgg16_512_coco2017",
    version="1.0.0",
    type="cv/object_detection",
    summary="SSD with backbone VGG16, trained with dataset COCO.",
    author="paddlepaddle",
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    author_email="")
class SSDVGG16_512(hub.Module):
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    def _initialize(self):
        self.default_pretrained_model_path = os.path.join(
            self.directory, "ssd_vgg16_512_model")
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        self.label_names = load_label_info(
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            os.path.join(self.directory, "label_file.txt"))
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        self.model_config = None
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        self._set_config()

    def _set_config(self):
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        # predictor config setting.
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        cpu_config = AnalysisConfig(self.default_pretrained_model_path)
        cpu_config.disable_glog_info()
        cpu_config.disable_gpu()
        cpu_config.switch_ir_optim(False)
        self.cpu_predictor = create_paddle_predictor(cpu_config)

        try:
            _places = os.environ["CUDA_VISIBLE_DEVICES"]
            int(_places[0])
            use_gpu = True
        except:
            use_gpu = False
        if use_gpu:
            gpu_config = AnalysisConfig(self.default_pretrained_model_path)
            gpu_config.disable_glog_info()
            gpu_config.enable_use_gpu(memory_pool_init_size_mb=500, device_id=0)
            self.gpu_predictor = create_paddle_predictor(gpu_config)

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        # model config setting.
        if not self.model_config:
            with open(os.path.join(self.directory, 'config.yml')) as fp:
                self.model_config = yaml.load(fp.read(), Loader=yaml.FullLoader)

        self.multi_box_head_config = self.model_config['MultiBoxHead']
        self.output_decoder_config = self.model_config['SSDOutputDecoder']
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    def context(self, trainable=True, pretrained=True, get_prediction=False):
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        """
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        Distill the Head Features, so as to perform transfer learning.

        Args:
            trainable (bool): whether to set parameters trainable.
            pretrained (bool): whether to load default pretrained model.
            get_prediction (bool): whether to get prediction.

        Returns:
             inputs(dict): the input variables.
             outputs(dict): the output variables.
             context_prog (Program): the program to execute transfer learning.
        """
        context_prog = fluid.Program()
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        startup_program = fluid.Program()
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        with fluid.program_guard(context_prog, startup_program):
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            with fluid.unique_name.guard():
                # image
                image = fluid.layers.data(
                    name='image', shape=[3, 512, 512], dtype='float32')
                # backbone
                backbone = VGG(
                    depth=16,
                    with_extra_blocks=True,
                    normalizations=[20., -1, -1, -1, -1, -1, -1],
                    extra_block_filters=[[256, 512, 1, 2,
                                          3], [128, 256, 1, 2, 3],
                                         [128, 256, 1, 2,
                                          3], [128, 256, 1, 2, 3],
                                         [128, 256, 1, 1, 4]])
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                # body_feats
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                body_feats = backbone(image)
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                # im_size
                im_size = fluid.layers.data(
                    name='im_size', shape=[2], dtype='int32')
                # var_prefix
                var_prefix = '@HUB_{}@'.format(self.name)
                # names of inputs
                inputs = {
                    'image': var_prefix + image.name,
                    'im_size': var_prefix + im_size.name
                }
                # names of outputs
                if get_prediction:
                    locs, confs, box, box_var = fluid.layers.multi_box_head(
                        inputs=body_feats,
                        image=image,
                        num_classes=81,
                        **self.multi_box_head_config)
                    pred = fluid.layers.detection_output(
                        loc=locs,
                        scores=confs,
                        prior_box=box,
                        prior_box_var=box_var,
                        **self.output_decoder_config)
                    outputs = {'bbox_out': [var_prefix + pred.name]}
                else:
                    outputs = {
                        'body_features':
                        [var_prefix + var.name for var in body_feats]
                    }

                # add_vars_prefix
                add_vars_prefix(context_prog, var_prefix)
                add_vars_prefix(fluid.default_startup_program(), var_prefix)
                # inputs
                inputs = {
                    key: context_prog.global_block().vars[value]
                    for key, value in inputs.items()
                }
                outputs = {
                    out_key: [
                        context_prog.global_block().vars[varname]
                        for varname in out_value
                    ]
                    for out_key, out_value in outputs.items()
                }
                # trainable
                for param in context_prog.global_block().iter_parameters():
                    param.trainable = trainable
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                place = fluid.CPUPlace()
                exe = fluid.Executor(place)
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                # pretrained
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                if pretrained:

                    def _if_exist(var):
                        return os.path.exists(
                            os.path.join(self.default_pretrained_model_path,
                                         var.name))

                    fluid.io.load_vars(
                        exe,
                        self.default_pretrained_model_path,
                        predicate=_if_exist)
                else:
                    exe.run(startup_program)

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                return inputs, outputs, context_prog
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    def object_detection(self,
                         paths=None,
                         images=None,
                         batch_size=1,
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                         use_gpu=False,
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                         output_dir='detection_result',
                         score_thresh=0.5,
                         visualization=True):
        """API of Object Detection.

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        Args:
            paths (list[str]): The paths of images.
            images (list(numpy.ndarray)): images data, shape of each is [H, W, C]
            batch_size (int): batch size.
            use_gpu (bool): Whether to use gpu.
            output_dir (str): The path to store output images.
            visualization (bool): Whether to save image or not.
            score_thresh (float): threshold for object detecion.

        Returns:
            res (list[dict]): The result of coco2017 detecion. keys include 'data', 'save_path', the corresponding value is:
                data (dict): the result of object detection, keys include 'left', 'top', 'right', 'bottom', 'label', 'confidence', the corresponding value is:
                    left (float): The X coordinate of the upper left corner of the bounding box;
                    top (float): The Y coordinate of the upper left corner of the bounding box;
                    right (float): The X coordinate of the lower right corner of the bounding box;
                    bottom (float): The Y coordinate of the lower right corner of the bounding box;
                    label (str): The label of detection result;
                    confidence (float): The confidence of detection result.
                save_path (str, optional): The path to save output images.
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        """
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        paths = paths if paths else list()
        data_reader = partial(reader, paths, images)
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        batch_reader = fluid.io.batch(data_reader, batch_size=batch_size)
        res = []
        for iter_id, feed_data in enumerate(batch_reader()):
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            feed_data = np.array(feed_data)
            image_tensor = PaddleTensor(np.array(list(feed_data[:, 0])).copy())
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            if use_gpu:
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                data_out = self.gpu_predictor.run([image_tensor])
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            else:
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                data_out = self.cpu_predictor.run([image_tensor])

            output = postprocess(
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                paths=paths,
                images=images,
                data_out=data_out,
                score_thresh=score_thresh,
                label_names=self.label_names,
                output_dir=output_dir,
                handle_id=iter_id * batch_size,
                visualization=visualization)
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            res.extend(output)
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        return res

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    def save_inference_model(self,
                             dirname,
                             model_filename=None,
                             params_filename=None,
                             combined=True):
        if combined:
            model_filename = "__model__" if not model_filename else model_filename
            params_filename = "__params__" if not params_filename else params_filename
        place = fluid.CPUPlace()
        exe = fluid.Executor(place)
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        program, feeded_var_names, target_vars = fluid.io.load_inference_model(
            dirname=self.default_pretrained_model_path, executor=exe)
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        fluid.io.save_inference_model(
            dirname=dirname,
            main_program=program,
            executor=exe,
            feeded_var_names=feeded_var_names,
            target_vars=target_vars,
            model_filename=model_filename,
            params_filename=params_filename)

    @serving
    def serving_method(self, images, **kwargs):
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        """
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        Run as a service.
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        """
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        images_decode = [base64_to_cv2(image) for image in images]
        results = self.object_detection(images_decode, **kwargs)
        return results
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    @runnable
    def run_cmd(self, argvs):
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        """
        Run as a command.
        """
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        self.parser = argparse.ArgumentParser(
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            description="Run the {} module.".format(self.name),
            prog='hub run {}'.format(self.name),
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            usage='%(prog)s',
            add_help=True)
        self.arg_input_group = self.parser.add_argument_group(
            title="Input options", description="Input data. Required")
        self.arg_config_group = self.parser.add_argument_group(
            title="Config options",
            description=
            "Run configuration for controlling module behavior, not required.")
        self.add_module_config_arg()
        self.add_module_input_arg()
        args = self.parser.parse_args(argvs)
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        results = self.face_detection(
            paths=[args.input_path],
            batch_size=args.batch_size,
            use_gpu=args.use_gpu,
            output_dir=args.output_dir,
            visualization=args.visualization,
            score_thresh=args.score_thresh)
        return results

    def add_module_config_arg(self):
        """
        Add the command config options.
        """
        self.arg_config_group.add_argument(
            '--use_gpu',
            type=ast.literal_eval,
            default=False,
            help="whether use GPU or not")
        self.arg_config_group.add_argument(
            '--output_dir',
            type=str,
            default='detection_result',
            help="The directory to save output images.")
        self.arg_config_group.add_argument(
            '--visualization',
            type=ast.literal_eval,
            default=False,
            help="whether to save output as images.")

    def add_module_input_arg(self):
        """
        Add the command input options.
        """
        self.arg_input_group.add_argument(
            '--input_path', type=str, help="path to image.")
        self.arg_input_group.add_argument(
            '--batch_size',
            type=ast.literal_eval,
            default=1,
            help="batch size.")
        self.arg_input_group.add_argument(
            '--score_thresh',
            type=ast.literal_eval,
            default=0.5,
            help="threshold for object detecion.")