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import os |
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import copy |
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import numpy as np |
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try: |
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from collections.abc import Sequence |
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except Exception: |
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from collections import Sequence |
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from paddle.io import Dataset |
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from ppdet.core.workspace import register, serializable |
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from ppdet.utils.download import get_dataset_path |
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from ppdet.data import source |
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from ppdet.utils.logger import setup_logger |
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logger = setup_logger(__name__) |
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@serializable |
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class DetDataset(Dataset): |
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""" |
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Load detection dataset. |
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Args: |
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dataset_dir (str): root directory for dataset. |
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image_dir (str): directory for images. |
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anno_path (str): annotation file path. |
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data_fields (list): key name of data dictionary, at least have 'image'. |
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sample_num (int): number of samples to load, -1 means all. |
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use_default_label (bool): whether to load default label list. |
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repeat (int): repeat times for dataset, use in benchmark. |
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""" |
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def __init__(self, |
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dataset_dir=None, |
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image_dir=None, |
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anno_path=None, |
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data_fields=['image'], |
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sample_num=-1, |
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use_default_label=None, |
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repeat=1, |
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**kwargs): |
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super(DetDataset, self).__init__() |
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self.dataset_dir = dataset_dir if dataset_dir is not None else '' |
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self.anno_path = anno_path |
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self.image_dir = image_dir if image_dir is not None else '' |
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self.data_fields = data_fields |
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self.sample_num = sample_num |
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self.use_default_label = use_default_label |
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self.repeat = repeat |
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self._epoch = 0 |
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self._curr_iter = 0 |
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def __len__(self, ): |
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return len(self.roidbs) * self.repeat |
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def __call__(self, *args, **kwargs): |
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return self |
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def __getitem__(self, idx): |
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n = len(self.roidbs) |
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if self.repeat > 1: |
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idx %= n |
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roidb = copy.deepcopy(self.roidbs[idx]) |
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if self.mixup_epoch == 0 or self._epoch < self.mixup_epoch: |
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idx = np.random.randint(n) |
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roidb = [roidb, copy.deepcopy(self.roidbs[idx])] |
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elif self.cutmix_epoch == 0 or self._epoch < self.cutmix_epoch: |
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idx = np.random.randint(n) |
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roidb = [roidb, copy.deepcopy(self.roidbs[idx])] |
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elif self.mosaic_epoch == 0 or self._epoch < self.mosaic_epoch: |
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roidb = [roidb, ] + [ |
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copy.deepcopy(self.roidbs[np.random.randint(n)]) |
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for _ in range(4) |
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] |
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elif self.pre_img_epoch == 0 or self._epoch < self.pre_img_epoch: |
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idx_pre_img = idx - 1 |
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if idx_pre_img < 0: |
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idx_pre_img = idx + 1 |
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roidb = [roidb, ] + [copy.deepcopy(self.roidbs[idx_pre_img])] |
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if isinstance(roidb, Sequence): |
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for r in roidb: |
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r['curr_iter'] = self._curr_iter |
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else: |
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roidb['curr_iter'] = self._curr_iter |
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self._curr_iter += 1 |
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return self.transform(roidb) |
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def check_or_download_dataset(self): |
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self.dataset_dir = get_dataset_path(self.dataset_dir, self.anno_path, |
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self.image_dir) |
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def set_kwargs(self, **kwargs): |
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self.mixup_epoch = kwargs.get('mixup_epoch', -1) |
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self.cutmix_epoch = kwargs.get('cutmix_epoch', -1) |
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self.mosaic_epoch = kwargs.get('mosaic_epoch', -1) |
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self.pre_img_epoch = kwargs.get('pre_img_epoch', -1) |
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def set_transform(self, transform): |
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self.transform = transform |
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def set_epoch(self, epoch_id): |
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self._epoch = epoch_id |
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def parse_dataset(self, ): |
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raise NotImplementedError( |
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"Need to implement parse_dataset method of Dataset") |
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def get_anno(self): |
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if self.anno_path is None: |
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return |
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return os.path.join(self.dataset_dir, self.anno_path) |
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def _is_valid_file(f, extensions=('.jpg', '.jpeg', '.png', '.bmp')): |
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return f.lower().endswith(extensions) |
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def _make_dataset(dir): |
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dir = os.path.expanduser(dir) |
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if not os.path.isdir(dir): |
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raise ('{} should be a dir'.format(dir)) |
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images = [] |
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for root, _, fnames in sorted(os.walk(dir, followlinks=True)): |
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for fname in sorted(fnames): |
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path = os.path.join(root, fname) |
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if _is_valid_file(path): |
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images.append(path) |
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return images |
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@register |
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@serializable |
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class ImageFolder(DetDataset): |
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def __init__(self, |
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dataset_dir=None, |
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image_dir=None, |
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anno_path=None, |
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sample_num=-1, |
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use_default_label=None, |
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**kwargs): |
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super(ImageFolder, self).__init__( |
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dataset_dir, |
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image_dir, |
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anno_path, |
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sample_num=sample_num, |
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use_default_label=use_default_label) |
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self._imid2path = {} |
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self.roidbs = None |
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self.sample_num = sample_num |
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def check_or_download_dataset(self): |
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return |
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def get_anno(self): |
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if self.anno_path is None: |
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return |
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if self.dataset_dir: |
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return os.path.join(self.dataset_dir, self.anno_path) |
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else: |
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return self.anno_path |
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def parse_dataset(self, ): |
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if not self.roidbs: |
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self.roidbs = self._load_images() |
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def _parse(self): |
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image_dir = self.image_dir |
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if not isinstance(image_dir, Sequence): |
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image_dir = [image_dir] |
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images = [] |
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for im_dir in image_dir: |
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if os.path.isdir(im_dir): |
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im_dir = os.path.join(self.dataset_dir, im_dir) |
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images.extend(_make_dataset(im_dir)) |
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elif os.path.isfile(im_dir) and _is_valid_file(im_dir): |
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images.append(im_dir) |
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return images |
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def _load_images(self): |
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images = self._parse() |
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ct = 0 |
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records = [] |
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for image in images: |
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assert image != '' and os.path.isfile(image), \ |
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"Image {} not found".format(image) |
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if self.sample_num > 0 and ct >= self.sample_num: |
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break |
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rec = {'im_id': np.array([ct]), 'im_file': image} |
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self._imid2path[ct] = image |
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ct += 1 |
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records.append(rec) |
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assert len(records) > 0, "No image file found" |
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return records |
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def get_imid2path(self): |
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return self._imid2path |
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def set_images(self, images): |
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self.image_dir = images |
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self.roidbs = self._load_images() |
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def set_slice_images(self, |
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images, |
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slice_size=[640, 640], |
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overlap_ratio=[0.25, 0.25]): |
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self.image_dir = images |
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ori_records = self._load_images() |
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try: |
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import sahi |
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from sahi.slicing import slice_image |
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except Exception as e: |
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logger.error( |
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'sahi not found, plaese install sahi. ' |
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'for example: `pip install sahi`, see https://github.com/obss/sahi.' |
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) |
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raise e |
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sub_img_ids = 0 |
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ct = 0 |
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ct_sub = 0 |
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records = [] |
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for i, ori_rec in enumerate(ori_records): |
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im_path = ori_rec['im_file'] |
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slice_image_result = sahi.slicing.slice_image( |
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image=im_path, |
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slice_height=slice_size[0], |
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slice_width=slice_size[1], |
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overlap_height_ratio=overlap_ratio[0], |
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overlap_width_ratio=overlap_ratio[1]) |
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sub_img_num = len(slice_image_result) |
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for _ind in range(sub_img_num): |
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im = slice_image_result.images[_ind] |
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rec = { |
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'image': im, |
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'im_id': np.array([sub_img_ids + _ind]), |
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'h': im.shape[0], |
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'w': im.shape[1], |
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'ori_im_id': np.array([ori_rec['im_id'][0]]), |
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'st_pix': np.array( |
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slice_image_result.starting_pixels[_ind], |
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dtype=np.float32), |
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'is_last': 1 if _ind == sub_img_num - 1 else 0, |
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} if 'image' in self.data_fields else {} |
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records.append(rec) |
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ct_sub += sub_img_num |
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ct += 1 |
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logger.info('{} samples and slice to {} sub_samples.'.format(ct, |
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ct_sub)) |
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self.roidbs = records |
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def get_label_list(self): |
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return self.anno_path |
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@register |
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class CommonDataset(object): |
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def __init__(self, **dataset_args): |
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super(CommonDataset, self).__init__() |
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dataset_args = copy.deepcopy(dataset_args) |
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type = dataset_args.pop("name") |
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self.dataset = getattr(source, type)(**dataset_args) |
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def __call__(self): |
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return self.dataset |
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@register |
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class TrainDataset(CommonDataset): |
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pass |
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@register |
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class EvalMOTDataset(CommonDataset): |
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pass |
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@register |
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class TestMOTDataset(CommonDataset): |
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pass |
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@register |
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class EvalDataset(CommonDataset): |
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pass |
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@register |
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class TestDataset(CommonDataset): |
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pass |
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