Source code for cvpods.data.datasets.objects365

#!/usr/bin/env python3
# -*- coding: utf-8 -*-
# Copyright (c) BaseDetection, Inc. and its affiliates. All Rights Reserved

import contextlib
import copy
import io
import logging
import os
import os.path as osp

import numpy as np

import torch

from cvpods.structures import BoxMode
from cvpods.utils import PathManager, Timer

from ..base_dataset import BaseDataset
from ..detection_utils import (
    annotations_to_instances,
    check_image_size,
    create_keypoint_hflip_indices,
    filter_empty_instances,
    read_image
)
from ..registry import DATASETS
from .objects365_categories import OBJECTS365_CATEGORIES
from .paths_route import _PREDEFINED_SPLITS_OBJECTS365

"""
This file contains functions to parse COCO-format annotations into dicts in "cvpods format".
"""

logger = logging.getLogger(__name__)


[docs]@DATASETS.register() class Objects365Dataset(BaseDataset): def __init__(self, cfg, dataset_name, transforms=[], is_train=True): super(Objects365Dataset, self).__init__(cfg, dataset_name, transforms, is_train) self.task_key = "objects365" # for task: instance detection/segmentation self.meta = self._get_metadata() self.dataset_dicts = self._load_annotations( self.meta["json_file"], self.meta["image_root"], dataset_name ) # fmt: off self.data_format = cfg.INPUT.FORMAT self.filter_empty = cfg.DATALOADER.FILTER_EMPTY_ANNOTATIONS self.keypoint_on = cfg.MODEL.KEYPOINT_ON self.load_proposals = cfg.MODEL.LOAD_PROPOSALS self.proposal_files = cfg.DATASETS.PROPOSAL_FILES_TRAIN # fmt: on if is_train: self.dataset_dicts = self._filter_annotations( filter_empty=self.filter_empty, min_keypoints=cfg.MODEL.ROI_KEYPOINT_HEAD.MIN_KEYPOINTS_PER_IMAGE if self.keypoint_on else 0, proposal_files=self.proposal_files if self.load_proposals else None, ) self._set_group_flag() self.eval_with_gt = cfg.TEST.get("WITH_GT", False) if self.keypoint_on: # Flip only makes sense in training self.keypoint_hflip_indices = create_keypoint_hflip_indices( cfg.DATASETS.TRAIN) else: self.keypoint_hflip_indices = None
[docs] def __getitem__(self, index): """Load data, apply transforms, converto to Instances. """ dataset_dict = copy.deepcopy(self.dataset_dicts[index]) # read image image = read_image(dataset_dict["file_name"], format=self.data_format) check_image_size(dataset_dict, image) if "annotations" in dataset_dict: annotations = dataset_dict.pop("annotations") annotations = [ann for ann in annotations if ann.get("iscrowd", 0) == 0] else: annotations = None # apply transfrom image, annotations = self._apply_transforms(image, annotations) if annotations is not None: image_shape = image.shape[:2] # h, w instances = annotations_to_instances(annotations, image_shape) # # Create a tight bounding box from masks, useful when image is cropped # if self.crop_gen and instances.has("gt_masks"): # instances.gt_boxes = instances.gt_masks.get_bounding_boxes() dataset_dict["instances"] = filter_empty_instances(instances) # convert to Instance type # Pytorch's dataloader is efficient on torch.Tensor due to shared-memory, # but not efficient on large generic data structures due to the use of pickle & mp.Queue. # Therefore it's important to use torch.Tensor. # h, w, c -> c, h, w dataset_dict["image"] = torch.as_tensor(np.ascontiguousarray(image.transpose(2, 0, 1))) return dataset_dict
def __reset__(self): raise NotImplementedError def __len__(self): return len(self.dataset_dicts) def _load_annotations( self, json_file, image_root, dataset_name=None, extra_annotation_keys=None ): """ Load a json file with COCO's instances annotation format. Currently supports instance detection, instance segmentation, and person keypoints annotations. Args: json_file (str): full path to the json file in COCO instances annotation format. image_root (str): the directory where the images in this json file exists. dataset_name (str): the name of the dataset (e.g., coco_2017_train). If provided, this function will also put "thing_classes" into the metadata associated with this dataset. extra_annotation_keys (list[str]): list of per-annotation keys that should also be loaded into the dataset dict (besides "iscrowd", "bbox", "keypoints", "category_id", "segmentation"). The values for these keys will be returned as-is. For example, the densepose annotations are loaded in this way. Returns: list[dict]: a list of dicts in cvpods standard format. (See `Using Custom Datasets </tutorials/datasets.html>`_ ) Notes: 1. This function does not read the image files. The results do not have the "image" field. """ from pycocotools.coco import COCO timer = Timer() json_file = PathManager.get_local_path(json_file) with contextlib.redirect_stdout(io.StringIO()): coco_api = COCO(json_file) if timer.seconds() > 1: logger.info("Loading {} takes {:.2f} seconds.".format(json_file, timer.seconds())) id_map = None if dataset_name is not None: meta = self.meta cat_ids = sorted(coco_api.getCatIds()) # The categories in a custom json file may not be sorted. # In COCO, certain category ids are artificially removed, # and by convention they are always ignored. # We deal with COCO's id issue and translate # the category ids to contiguous ids in [0, 80). # It works by looking at the "categories" field in the json, therefore # if users' own json also have incontiguous ids, we'll # apply this mapping as well but print a warning. if not (min(cat_ids) == 1 and max(cat_ids) == len(cat_ids)): if "coco" not in dataset_name: logger.warning( """ \ Category ids in annotations are not \ in [1, #categories]! We'll apply a mapping for you. \ """ ) id_map = {v: i for i, v in enumerate(cat_ids)} meta["thing_dataset_id_to_contiguous_id"] = id_map # sort indices for reproducible results img_ids = sorted(list(coco_api.imgs.keys())) # imgs is a list of dicts, each looks something like: # {'license': 4, # 'url': 'http://farm6.staticflickr.com/5454/9413846304_881d5e5c3b_z.jpg', # 'file_name': 'COCO_val2014_000000001268.jpg', # 'height': 427, # 'width': 640, # 'date_captured': '2013-11-17 05:57:24', # 'id': 1268} imgs = coco_api.loadImgs(img_ids) # anns is a list[list[dict]], where each dict is an annotation # record for an object. The inner list enumerates the objects in an image # and the outer list enumerates over images. Example of anns[0]: # [{'segmentation': [[192.81, # 247.09, # ... # 219.03, # 249.06]], # 'area': 1035.749, # 'iscrowd': 0, # 'image_id': 1268, # 'bbox': [192.81, 224.8, 74.73, 33.43], # 'category_id': 16, # 'id': 42986}, # ...] anns = [coco_api.imgToAnns[img_id] for img_id in img_ids] if "minival" not in json_file: # The popular valminusminival & minival annotations for COCO2014 contain this bug. # However the ratio of buggy annotations there is tiny and does not affect accuracy. # Therefore we explicitly white-list them. ann_ids = [ann["id"] for anns_per_image in anns for ann in anns_per_image] assert len(set(ann_ids)) == len(ann_ids), ( "Annotation ids in '{}' are not unique!".format(json_file) ) imgs_anns = list(zip(imgs, anns)) logger.info("Loaded {} images in COCO format from {}".format(len(imgs_anns), json_file)) dataset_dicts = [] ann_keys = ["iscrowd", "bbox", "keypoints", "category_id"] + (extra_annotation_keys or []) num_instances_without_valid_segmentation = 0 for (img_dict, anno_dict_list) in imgs_anns: record = {} record["file_name"] = os.path.join(image_root, img_dict["file_name"]) record["height"] = img_dict["height"] record["width"] = img_dict["width"] image_id = record["image_id"] = img_dict["id"] objs = [] for anno in anno_dict_list: # Check that the image_id in this annotation is the same as # the image_id we're looking at. # This fails only when the data parsing logic or the annotation file is buggy. # The original COCO valminusminival2014 & minival2014 annotation files # actually contains bugs that, together with certain ways of using COCO API, # can trigger this assertion. assert anno["image_id"] == image_id if anno.get("ignore", 0) != 0: continue obj = {key: anno[key] for key in ann_keys if key in anno} segm = anno.get("segmentation", None) if segm: # either list[list[float]] or dict(RLE) if not isinstance(segm, dict): # filter out invalid polygons (< 3 points) segm = [poly for poly in segm if len(poly) % 2 == 0 and len(poly) >= 6] if len(segm) == 0: num_instances_without_valid_segmentation += 1 continue # ignore this instance obj["segmentation"] = segm keypts = anno.get("keypoints", None) if keypts: # list[int] for idx, v in enumerate(keypts): if idx % 3 != 2: # COCO's segmentation coordinates are floating points in [0, H or W], # but keypoint coordinates are integers in [0, H-1 or W-1] # Therefore we assume the coordinates are "pixel indices" and # add 0.5 to convert to floating point coordinates. keypts[idx] = v + 0.5 obj["keypoints"] = keypts obj["bbox_mode"] = BoxMode.XYWH_ABS if id_map: obj["category_id"] = id_map[obj["category_id"]] objs.append(obj) record["annotations"] = objs dataset_dicts.append(record) if num_instances_without_valid_segmentation > 0: logger.warn( "Filtered out {} instances without valid segmentation. " "There might be issues in your dataset generation process.".format( num_instances_without_valid_segmentation ) ) return dataset_dicts def _get_metadata(self): thing_classes = [k["name"] for k in OBJECTS365_CATEGORIES] meta = {"thing_classes": thing_classes} image_root, json_file = _PREDEFINED_SPLITS_OBJECTS365[self.task_key][self.name] meta["image_root"] = osp.join(self.data_root, image_root) \ if "://" not in image_root else image_root meta["json_file"] = osp.join(self.data_root, json_file) \ if "://" not in image_root else osp.join(image_root, json_file) meta["evaluator_type"] = _PREDEFINED_SPLITS_OBJECTS365["evaluator_type"][self.task_key] return meta
[docs] def evaluate(self, predictions): """Dataset must provide a evaluation function to evaluate model.""" raise NotImplementedError
@property def ground_truth_annotations(self): return self.dataset_dicts
# TODO this function is not specific to COCO, except for the "image_id" logic. def load_sem_seg(gt_root, image_root, gt_ext="png", image_ext="jpg"): """ Load semantic segmentation datasets. All files under "gt_root" with "gt_ext" extension are treated as ground truth annotations and all files under "image_root" with "image_ext" extension as input images. Ground truth and input images are matched using file paths relative to "gt_root" and "image_root" respectively without taking into account file extensions. This works for COCO as well as some other datasets. Args: gt_root (str): full path to ground truth semantic segmentation files. Semantic segmentation annotations are stored as images with integer values in pixels that represent corresponding semantic labels. image_root (str): the directory where the input images are. gt_ext (str): file extension for ground truth annotations. image_ext (str): file extension for input images. Returns: list[dict]: a list of dicts in cvpods standard format without instance-level annotation. Notes: 1. This function does not read the image and ground truth files. The results do not have the "image" and "sem_seg" fields. """ # We match input images with ground truth based on their relative filepaths (without file # extensions) starting from 'image_root' and 'gt_root' respectively. def file2id(folder_path, file_path): # extract relative path starting from `folder_path` image_id = os.path.normpath( os.path.relpath(file_path, start=folder_path)) # remove file extension image_id = os.path.splitext(image_id)[0] return image_id input_files = sorted( (os.path.join(image_root, f) for f in PathManager.ls(image_root) if f.endswith(image_ext)), key=lambda file_path: file2id(image_root, file_path), ) gt_files = sorted( (os.path.join(gt_root, f) for f in PathManager.ls(gt_root) if f.endswith(gt_ext)), key=lambda file_path: file2id(gt_root, file_path), ) assert len(gt_files) > 0, "No annotations found in {}.".format(gt_root) # Use the intersection, so that val2017_100 annotations can run smoothly with val2017 images if len(input_files) != len(gt_files): logger.warn( "Directory {} and {} has {} and {} files, respectively.".format( image_root, gt_root, len(input_files), len(gt_files))) input_basenames = [ os.path.basename(f)[:-len(image_ext)] for f in input_files ] gt_basenames = [os.path.basename(f)[:-len(gt_ext)] for f in gt_files] intersect = list(set(input_basenames) & set(gt_basenames)) # sort, otherwise each worker may obtain a list[dict] in different order intersect = sorted(intersect) logger.warn("Will use their intersection of {} files.".format( len(intersect))) input_files = [ os.path.join(image_root, f + image_ext) for f in intersect ] gt_files = [os.path.join(gt_root, f + gt_ext) for f in intersect] logger.info("Loaded {} images with semantic segmentation from {}".format( len(input_files), image_root)) dataset_dicts = [] for (img_path, gt_path) in zip(input_files, gt_files): record = {} record["file_name"] = img_path record["sem_seg_file_name"] = gt_path dataset_dicts.append(record) return dataset_dicts