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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)
#为了适配eval_ego脚本增加
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["region_masks"] = gt_masks_list
dataset_dict["vp_file_path"] = dataset_dict["vp_image"]
# TODO: get padding mask
# by feeding a "segmentation mask" to the same transforms
padding_mask = np.ones(image.shape[:2])
#transforms,将对exo图像的变换记录了下来,这里的对图像的变换是resize、crop
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] # h, w
# print("exo_image_shape:", image_shape)
# 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.
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"])
# TODO: get padding mask
# by feeding a "segmentation mask" to the same transforms
vp_padding_mask = np.ones(vp_image.shape[:2])
#变换到1024
vp_image, vp_transforms = T.apply_transform_gens(self.tfm_gens, vp_image)
# the crop transformation has default padding value 0 for segmentation
# print("vp_image final_shape:", vp_image.shape)
vp_padding_mask = vp_transforms.apply_segmentation(vp_padding_mask)
# print(vp_padding_mask.shape)
vp_padding_mask = ~ vp_padding_mask.astype(bool)
#1024x1024
vp_image_shape = vp_image.shape[:2] # h, w
# print("vp_image_shape:", vp_image_shape)
# 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.
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 = []
# print(f"vp_image_shape:{vp_image_shape}")
# print(dataset_dict.pop("vp_annotations")[0])
#这里的obj是exo每一帧中的mask
#对该帧下每个物体的mask进行与vp-image相同的变换
#这里的vp_image_shape是变换后的目标大小,所以应该是1024x1024
#vp_annos存储的是经过变换后的参考帧的所有物体mask
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)
#vp_region_masks存储的是参考帧里的所有RLE格式的coco mask
if "annotations" in dataset_dict:
#print("annotations in dataset_dict") # YES
# USER: Modify this if you want to keep them for some reason.
for anno in dataset_dict["annotations"]:
# Let's always keep mask
# if not self.mask_on:
# anno.pop("segmentation", None)
anno.pop("keypoints", None)
annotations = dataset_dict['annotations']
# USER: Implement additional transformations if you have other types of data
#annos存储的是target帧中所有经过变换的物体mask
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')
#print(dataset_dict["file_name"]) #debug
filter_annos = []
#到这里只处理了anno['segmentation'],anno['mask_visual_prompt_mask']还是RLE格式的
# print("annos:", annos[0])
# if 'point_visual_prompt_mask' in annos[0]:
'''
确定anno中是哪种形式的mask。这里需要根据交互式任务的不同到getitem中对anno={"segmentation","area","class_id"}进行修改,
把原生的segmentation替换为{"mask_visual_prompt_mask","point_visual_prompt_mask",..."area","class_id"}的形式
'''
if 'mask_visual_prompt_mask' in annos[0]:
if region_mask_type is None:
# region_mask_type = ['point_visual_prompt_mask', 'mask_visual_prompt_mask', 'box_visual_prompt_mask',
# 'scribble_visual_prompt_mask']
#根据任务的不同进行替换,前提是anno中必须有这个键,要不然会报错
region_mask_type = ['mask_visual_prompt_mask']
#这里的意思是同一个物体可能有许多不同格式的mask,把同一个物体所有不同格式的mask类型都取出来放在non_empty_masks中
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
#对于每个物体,每次随机地选择一种mask类型
#region_masks里存储的是解码,且经过变换后的物体mask
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
# After transforms such as cropping are applied, the bounding box may no longer
# tightly bound the object. As an example, imagine a triangle object
# [(0,0), (2,0), (0,2)] cropped by a box [(1,0),(2,2)] (XYXY format). The tight
# bounding box of the cropped triangle should be [(1,0),(2,1)], which is not equal to
# the intersection of original bounding box and the cropping box.
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)
# print("instances:", instances)
# coco mapper中的instances实际上就是一个帧中的所有物体
dataset_dict["instances"] = instances
#print ('instances:', instances)
#print("dataset_dict:", dataset_dict.keys())
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 = []
# 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.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)
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