ObjectRelator / objectrelator /model /datasets_mapper /coco_instance_mapper.py
YuqianFu's picture
Upload folder using huggingface_hub
fe6c2e4 verified
Raw
History Blame Contribute Delete
12.6 kB
import copy
import logging
import numpy as np
import torch
import random
import cv2
from detectron2.config import configurable
from detectron2.data import detection_utils as utils
from detectron2.data import transforms as T
from detectron2.structures import BitMasks
from pycocotools import mask as coco_mask
from pycocotools.mask import encode, decode, frPyObjects
def draw_circle(mask, center, radius):
y, x = np.ogrid[:mask.shape[0], :mask.shape[1]]
distance = np.sqrt((x - center[1]) ** 2 + (y - center[0]) ** 2)
mask[distance <= radius] = 1
def enhance_with_circles(binary_mask, radius=5):
if not isinstance(binary_mask, np.ndarray):
binary_mask = np.array(binary_mask)
binary_mask = binary_mask.astype(np.uint8)
output_mask = np.zeros_like(binary_mask, dtype=np.uint8)
points = np.argwhere(binary_mask == 1)
for point in points:
draw_circle(output_mask, (point[0], point[1]), radius)
return output_mask
def is_mask_non_empty(rle_mask):
if rle_mask is None:
return False
binary_mask = decode(rle_mask)
return binary_mask.sum() > 0
def convert_coco_poly_to_mask(segmentations, height, width):
masks = []
for polygons in segmentations:
rles = coco_mask.frPyObjects(polygons, height, width)
mask = coco_mask.decode(rles)
if len(mask.shape) < 3:
mask = mask[..., None]
mask = torch.as_tensor(mask, dtype=torch.uint8)
mask = mask.any(dim=2)
masks.append(mask)
if masks:
masks = torch.stack(masks, dim=0)
else:
masks = torch.zeros((0, height, width), dtype=torch.uint8)
return masks
def build_transform_gen(cfg):
"""
Create a list of default :class:`Augmentation` from config.
Now it includes resizing and flipping.
Returns:
list[Augmentation]
"""
image_size = cfg.INPUT.IMAGE_SIZE
min_scale = cfg.INPUT.MIN_SCALE
max_scale = cfg.INPUT.MAX_SCALE
augmentation = []
# if cfg.INPUT.RANDOM_FLIP != "none":
# augmentation.append(
# T.RandomFlip(
# horizontal=cfg.INPUT.RANDOM_FLIP == "horizontal",
# vertical=cfg.INPUT.RANDOM_FLIP == "vertical",
# )
# )
augmentation.extend([
# T.ResizeScale(
# min_scale=min_scale, max_scale=max_scale, target_height=image_size, target_width=image_size
# ),
T.ResizeShortestEdge(
short_edge_length=image_size, max_size=image_size
),
T.FixedSizeCrop(crop_size=(image_size, image_size), seg_pad_value=0),
])
return augmentation
class COCOInstanceNewBaselineDatasetMapper:
"""
A callable which takes a dataset dict in Detectron2 Dataset format,
and map it into a format used by MaskFormer.
This dataset mapper applies the same transformation as DETR for COCO panoptic segmentation.
The callable currently does the following:
1. Read the image from "file_name"
2. Applies geometric transforms to the image and annotation
3. Find and applies suitable cropping to the image and annotation
4. Prepare image and annotation to Tensors
"""
def __init__(self, cfg):
"""
NOTE: this interface is experimental.
Args:
is_train: for training or inference
augmentations: a list of augmentations or deterministic transforms to apply
tfm_gens: data augmentation
image_format: an image format supported by :func:`detection_utils.read_image`.
"""
self.tfm_gens = build_transform_gen(cfg)
self.pixel_mean = torch.Tensor([123.675, 116.28, 103.53]).view(-1, 1, 1)
self.pixel_std = torch.Tensor([58.395, 57.12, 57.375]).view(-1, 1, 1)
@classmethod
def from_config(cls, cfg, is_train=True):
# Build augmentation
tfm_gens = build_transform_gen(cfg, is_train)
ret = {
"is_train": is_train,
"tfm_gens": tfm_gens,
"image_format": cfg.INPUT.FORMAT,
}
return ret
def preprocess(self, dataset_dict, region_mask_type=None, mask_format='polygon'):
"""
Args:
dataset_dict (dict): Metadata of one image, in Detectron2 Dataset format.
Returns:
dict: a format that builtin models in detectron2 accept
"""
dataset_dict = copy.deepcopy(dataset_dict) # it will be modified by code below
if isinstance(dataset_dict["file_name"],str):
image = utils.read_image(dataset_dict["file_name"], format='RGB')
else:
image = np.array(dataset_dict["file_name"])
# print(dataset_dict)
# print(image)
utils.check_image_size(dataset_dict, image)
utils.check_image_size(dataset_dict, image)
gt_masks_list = []
for ann in dataset_dict["annotations"]:
mask_tmp = decode(ann["segmentation"])
gt_masks_list.append(mask_tmp)
dataset_dict["gt_mask_list"] = gt_masks_list
dataset_dict["vp_file_path"] = dataset_dict["vp_image"]
padding_mask = np.ones(image.shape[:2])
image, transforms = T.apply_transform_gens(self.tfm_gens, image)
# the crop transformation has default padding value 0 for segmentation
padding_mask = transforms.apply_segmentation(padding_mask)
padding_mask = ~ padding_mask.astype(bool)
image_shape = image.shape[:2]
image = torch.as_tensor(np.ascontiguousarray(image.transpose(2, 0, 1)))
dataset_dict["image"] = (image - self.pixel_mean) / self.pixel_std
dataset_dict["padding_mask"] = torch.as_tensor(np.ascontiguousarray(padding_mask))
dataset_dict['transforms'] = transforms
region_masks = []
if 'vp_image' in dataset_dict:
if isinstance(dataset_dict["vp_image"], str):
vp_image = utils.read_image(dataset_dict["vp_image"], format='RGB')
else:
vp_image = np.array(dataset_dict["vp_image"])
vp_padding_mask = np.ones(vp_image.shape[:2])
vp_image, vp_transforms = T.apply_transform_gens(self.tfm_gens, vp_image)
vp_padding_mask = vp_transforms.apply_segmentation(vp_padding_mask)
vp_padding_mask = ~ vp_padding_mask.astype(bool)
#1024x1024
vp_image_shape = vp_image.shape[:2]
vp_image = torch.as_tensor(np.ascontiguousarray(vp_image.transpose(2, 0, 1)))
dataset_dict["vp_image"] = (vp_image - self.pixel_mean) / self.pixel_std
dataset_dict["vp_padding_mask"] = torch.as_tensor(np.ascontiguousarray(vp_padding_mask))
dataset_dict['vp_transforms'] = vp_transforms
vp_region_masks = []
vp_fill_number = []
vp_annos = [
utils.transform_instance_annotations(obj, vp_transforms, vp_image_shape)
for obj in dataset_dict.pop("vp_annotations")
if obj.get("iscrowd", 0) == 0
]
if len(vp_annos) == 0:
print('error')
else:
for vp_anno in vp_annos:
vp_region_mask = vp_anno['segmentation']
vp_fill_number.append(int(vp_anno['category_id']))
# vp_scale_region_mask = transforms.apply_segmentation(vp_region_mask)
vp_region_masks.append(vp_region_mask)
if "annotations" in dataset_dict:
for anno in dataset_dict["annotations"]:
anno.pop("keypoints", None)
annotations = dataset_dict['annotations']
annos = [
utils.transform_instance_annotations(obj, transforms, image_shape)
for obj in dataset_dict.pop("annotations")
if obj.get("iscrowd", 0) == 0
]
if len(annos) ==0:
print('error')
filter_annos = []
if 'mask_visual_prompt_mask' in annos[0]:
if region_mask_type is None:
region_mask_type = ['mask_visual_prompt_mask']
for anno in annos:
non_empty_masks = []
for mask_type in region_mask_type:
if is_mask_non_empty(anno[mask_type]):
non_empty_masks.append(mask_type)
# assert non_empty_masks, 'No visual prompt found in {}'.format(dataset_dict['file_name'])
if len(non_empty_masks) == 0:
continue
used_mask_type = random.choice(non_empty_masks)
region_mask = decode(anno[used_mask_type])
if used_mask_type in ['point_visual_prompt_mask', 'scribble_visual_prompt_mask']:
radius = 10 if used_mask_type == 'point_visual_prompt_mask' else 5
region_mask = enhance_with_circles(region_mask, radius)
scale_region_mask = transforms.apply_segmentation(region_mask)
region_masks.append(scale_region_mask)
filter_annos.append(anno)
if len(filter_annos) == 0:
filter_annos = annos
# NOTE: does not support BitMask due to augmentation
# Current BitMask cannot handle empty objects
# instances = utils.annotations_to_instances(annos, image_shape)
instances = utils.annotations_to_instances(filter_annos, image_shape, mask_format=mask_format) # null_mask:生成instances的函数
if 'lvis_category_id' in filter_annos[0]:
lvis_classes = [int(obj["lvis_category_id"]) for obj in annos]
lvis_classes = torch.tensor(lvis_classes, dtype=torch.int64)
instances.lvis_classes = lvis_classes
instances.gt_boxes = instances.gt_masks.get_bounding_boxes()
# non_empty_instance_mask = [len(obj.get('segmentation', [])) > 0 for obj in annos]
non_empty_instance_mask = [len(obj.get('segmentation', [])) > 0 for obj in filter_annos]
# Need to filter empty instances first (due to augmentation)
instances = utils.filter_empty_instances(instances) # debug null_mask
# Generate masks from polygon
h, w = instances.image_size
# image_size_xyxy = torch.as_tensor([w, h, w, h], dtype=torch.float)
if hasattr(instances, 'gt_masks'):
gt_masks = instances.gt_masks
if hasattr(gt_masks,'polygons'):
gt_masks = convert_coco_poly_to_mask(gt_masks.polygons, h, w)
else:
gt_masks = gt_masks.tensor.to(dtype=torch.uint8)
instances.gt_masks = gt_masks
if region_masks:
region_masks = [m for m, keep in zip(region_masks, non_empty_instance_mask) if keep]
assert len(region_masks) == len(instances), 'The number of region masks must match the number of instances'
region_masks = BitMasks(
torch.stack([torch.from_numpy(np.ascontiguousarray(x)) for x in region_masks])
)
instances.region_masks = region_masks
if 'vp_image' in dataset_dict:
vp_region_masks = BitMasks(
torch.stack([torch.from_numpy(np.ascontiguousarray(x)) for x in vp_region_masks])
)
instances.vp_region_masks = vp_region_masks
instances.vp_fill_number = torch.tensor(vp_fill_number, dtype=torch.int64)
dataset_dict["instances"] = instances
return dataset_dict
def build_transform_gen_for_eval(cfg):
image_size = cfg.INPUT.IMAGE_SIZE
min_scale = cfg.INPUT.MIN_SCALE
max_scale = cfg.INPUT.MAX_SCALE
augmentation = []
augmentation.extend([
T.ResizeShortestEdge(
short_edge_length=image_size, max_size=image_size
),
T.FixedSizeCrop(crop_size=(image_size, image_size), seg_pad_value=0),
])
return augmentation
class COCOInstanceNewBaselineDatasetMapperForEval(COCOInstanceNewBaselineDatasetMapper):
def __init__(self, cfg):
super().__init__(cfg)
self.tfm_gens = build_transform_gen_for_eval(cfg)
self.pixel_mean = torch.Tensor([123.675, 116.28, 103.53]).view(-1, 1, 1)
self.pixel_std = torch.Tensor([58.395, 57.12, 57.375]).view(-1, 1, 1)