Source code for detectron2.structures.masks

# Copyright (c) Facebook, Inc. and its affiliates.
import copy
import itertools
import numpy as np
from typing import Any, Iterator, List, Union
import pycocotools.mask as mask_util
import torch
from torch import device

from detectron2.layers.roi_align import ROIAlign
from detectron2.utils.memory import retry_if_cuda_oom

from .boxes import Boxes


def polygon_area(x, y):
    # Using the shoelace formula
    # https://stackoverflow.com/questions/24467972/calculate-area-of-polygon-given-x-y-coordinates
    return 0.5 * np.abs(np.dot(x, np.roll(y, 1)) - np.dot(y, np.roll(x, 1)))


def polygons_to_bitmask(polygons: List[np.ndarray], height: int, width: int) -> np.ndarray:
    """
    Args:
        polygons (list[ndarray]): each array has shape (Nx2,)
        height, width (int)

    Returns:
        ndarray: a bool mask of shape (height, width)
    """
    if len(polygons) == 0:
        # COCOAPI does not support empty polygons
        return np.zeros((height, width)).astype(np.bool)
    rles = mask_util.frPyObjects(polygons, height, width)
    rle = mask_util.merge(rles)
    return mask_util.decode(rle).astype(np.bool)


def rasterize_polygons_within_box(
    polygons: List[np.ndarray], box: np.ndarray, mask_size: int
) -> torch.Tensor:
    """
    Rasterize the polygons into a mask image and
    crop the mask content in the given box.
    The cropped mask is resized to (mask_size, mask_size).

    This function is used when generating training targets for mask head in Mask R-CNN.
    Given original ground-truth masks for an image, new ground-truth mask
    training targets in the size of `mask_size x mask_size`
    must be provided for each predicted box. This function will be called to
    produce such targets.

    Args:
        polygons (list[ndarray[float]]): a list of polygons, which represents an instance.
        box: 4-element numpy array
        mask_size (int):

    Returns:
        Tensor: BoolTensor of shape (mask_size, mask_size)
    """
    # 1. Shift the polygons w.r.t the boxes
    w, h = box[2] - box[0], box[3] - box[1]

    polygons = copy.deepcopy(polygons)
    for p in polygons:
        p[0::2] = p[0::2] - box[0]
        p[1::2] = p[1::2] - box[1]

    # 2. Rescale the polygons to the new box size
    # max() to avoid division by small number
    ratio_h = mask_size / max(h, 0.1)
    ratio_w = mask_size / max(w, 0.1)

    if ratio_h == ratio_w:
        for p in polygons:
            p *= ratio_h
    else:
        for p in polygons:
            p[0::2] *= ratio_w
            p[1::2] *= ratio_h

    # 3. Rasterize the polygons with coco api
    mask = polygons_to_bitmask(polygons, mask_size, mask_size)
    mask = torch.from_numpy(mask)
    return mask


class BitMasks:
    """
    This class stores the segmentation masks for all objects in one image, in
    the form of bitmaps.

    Attributes:
        tensor: bool Tensor of N,H,W, representing N instances in the image.
    """

    def __init__(self, tensor: Union[torch.Tensor, np.ndarray]):
        """
        Args:
            tensor: bool Tensor of N,H,W, representing N instances in the image.
        """
        device = tensor.device if isinstance(tensor, torch.Tensor) else torch.device("cpu")
        tensor = torch.as_tensor(tensor, dtype=torch.bool, device=device)
        assert tensor.dim() == 3, tensor.size()
        self.image_size = tensor.shape[1:]
        self.tensor = tensor

    @torch.jit.unused
    def to(self, *args: Any, **kwargs: Any) -> "BitMasks":
        return BitMasks(self.tensor.to(*args, **kwargs))

    @property
    def device(self) -> torch.device:
        return self.tensor.device

    @torch.jit.unused
    def __getitem__(self, item: Union[int, slice, torch.BoolTensor]) -> "BitMasks":
        """
        Returns:
            BitMasks: Create a new :class:`BitMasks` by indexing.

        The following usage are allowed:

        1. `new_masks = masks[3]`: return a `BitMasks` which contains only one mask.
        2. `new_masks = masks[2:10]`: return a slice of masks.
        3. `new_masks = masks[vector]`, where vector is a torch.BoolTensor
           with `length = len(masks)`. Nonzero elements in the vector will be selected.

        Note that the returned object might share storage with this object,
        subject to Pytorch's indexing semantics.
        """
        if isinstance(item, int):
            return BitMasks(self.tensor[item].unsqueeze(0))
        m = self.tensor[item]
        assert m.dim() == 3, "Indexing on BitMasks with {} returns a tensor with shape {}!".format(
            item, m.shape
        )
        return BitMasks(m)

    @torch.jit.unused
    def __iter__(self) -> torch.Tensor:
        yield from self.tensor

    @torch.jit.unused
    def __repr__(self) -> str:
        s = self.__class__.__name__ + "("
        s += "num_instances={})".format(len(self.tensor))
        return s

    def __len__(self) -> int:
        return self.tensor.shape[0]

    def nonempty(self) -> torch.Tensor:
        """
        Find masks that are non-empty.

        Returns:
            Tensor: a BoolTensor which represents
                whether each mask is empty (False) or non-empty (True).
        """
        return self.tensor.flatten(1).any(dim=1)

[docs] @staticmethod def from_polygon_masks( polygon_masks: Union["PolygonMasks", List[List[np.ndarray]]], height: int, width: int ) -> "BitMasks": """ Args: polygon_masks (list[list[ndarray]] or PolygonMasks) height, width (int) """ if isinstance(polygon_masks, PolygonMasks): polygon_masks = polygon_masks.polygons masks = [polygons_to_bitmask(p, height, width) for p in polygon_masks] if len(masks): return BitMasks(torch.stack([torch.from_numpy(x) for x in masks])) else: return BitMasks(torch.empty(0, height, width, dtype=torch.bool))
[docs] @staticmethod def from_roi_masks(roi_masks: "ROIMasks", height: int, width: int) -> "BitMasks": """ Args: roi_masks: height, width (int): """ return roi_masks.to_bitmasks(height, width)
def crop_and_resize(self, boxes: torch.Tensor, mask_size: int) -> torch.Tensor: """ Crop each bitmask by the given box, and resize results to (mask_size, mask_size). This can be used to prepare training targets for Mask R-CNN. It has less reconstruction error compared to rasterization with polygons. However we observe no difference in accuracy, but BitMasks requires more memory to store all the masks. Args: boxes (Tensor): Nx4 tensor storing the boxes for each mask mask_size (int): the size of the rasterized mask. Returns: Tensor: A bool tensor of shape (N, mask_size, mask_size), where N is the number of predicted boxes for this image. """ assert len(boxes) == len(self), "{} != {}".format(len(boxes), len(self)) device = self.tensor.device batch_inds = torch.arange(len(boxes), device=device).to(dtype=boxes.dtype)[:, None] rois = torch.cat([batch_inds, boxes], dim=1) # Nx5 bit_masks = self.tensor.to(dtype=torch.float32) rois = rois.to(device=device) output = ( ROIAlign((mask_size, mask_size), 1.0, 0, aligned=True) .forward(bit_masks[:, None, :, :], rois) .squeeze(1) ) output = output >= 0.5 return output def get_bounding_boxes(self) -> Boxes: """ Returns: Boxes: tight bounding boxes around bitmasks. If a mask is empty, it's bounding box will be all zero. """ boxes = torch.zeros(self.tensor.shape[0], 4, dtype=torch.float32) x_any = torch.any(self.tensor, dim=1) y_any = torch.any(self.tensor, dim=2) for idx in range(self.tensor.shape[0]): x = torch.where(x_any[idx, :])[0] y = torch.where(y_any[idx, :])[0] if len(x) > 0 and len(y) > 0: boxes[idx, :] = torch.as_tensor( [x[0], y[0], x[-1] + 1, y[-1] + 1], dtype=torch.float32 ) return Boxes(boxes)
[docs] @staticmethod def cat(bitmasks_list: List["BitMasks"]) -> "BitMasks": """ Concatenates a list of BitMasks into a single BitMasks Arguments: bitmasks_list (list[BitMasks]) Returns: BitMasks: the concatenated BitMasks """ assert isinstance(bitmasks_list, (list, tuple)) assert len(bitmasks_list) > 0 assert all(isinstance(bitmask, BitMasks) for bitmask in bitmasks_list) cat_bitmasks = type(bitmasks_list[0])(torch.cat([bm.tensor for bm in bitmasks_list], dim=0)) return cat_bitmasks
class PolygonMasks: """ This class stores the segmentation masks for all objects in one image, in the form of polygons. Attributes: polygons: list[list[ndarray]]. Each ndarray is a float64 vector representing a polygon. """ def __init__(self, polygons: List[List[Union[torch.Tensor, np.ndarray]]]): """ Arguments: polygons (list[list[np.ndarray]]): The first level of the list correspond to individual instances, the second level to all the polygons that compose the instance, and the third level to the polygon coordinates. The third level array should have the format of [x0, y0, x1, y1, ..., xn, yn] (n >= 3). """ if not isinstance(polygons, list): raise ValueError( "Cannot create PolygonMasks: Expect a list of list of polygons per image. " "Got '{}' instead.".format(type(polygons)) ) def _make_array(t: Union[torch.Tensor, np.ndarray]) -> np.ndarray: # Use float64 for higher precision, because why not? # Always put polygons on CPU (self.to is a no-op) since they # are supposed to be small tensors. # May need to change this assumption if GPU placement becomes useful if isinstance(t, torch.Tensor): t = t.cpu().numpy() return np.asarray(t).astype("float64") def process_polygons( polygons_per_instance: List[Union[torch.Tensor, np.ndarray]] ) -> List[np.ndarray]: if not isinstance(polygons_per_instance, list): raise ValueError( "Cannot create polygons: Expect a list of polygons per instance. " "Got '{}' instead.".format(type(polygons_per_instance)) ) # transform each polygon to a numpy array polygons_per_instance = [_make_array(p) for p in polygons_per_instance] for polygon in polygons_per_instance: if len(polygon) % 2 != 0 or len(polygon) < 6: raise ValueError(f"Cannot create a polygon from {len(polygon)} coordinates.") return polygons_per_instance self.polygons: List[List[np.ndarray]] = [ process_polygons(polygons_per_instance) for polygons_per_instance in polygons ] def to(self, *args: Any, **kwargs: Any) -> "PolygonMasks": return self @property def device(self) -> torch.device: return torch.device("cpu") def get_bounding_boxes(self) -> Boxes: """ Returns: Boxes: tight bounding boxes around polygon masks. """ boxes = torch.zeros(len(self.polygons), 4, dtype=torch.float32) for idx, polygons_per_instance in enumerate(self.polygons): minxy = torch.as_tensor([float("inf"), float("inf")], dtype=torch.float32) maxxy = torch.zeros(2, dtype=torch.float32) for polygon in polygons_per_instance: coords = torch.from_numpy(polygon).view(-1, 2).to(dtype=torch.float32) minxy = torch.min(minxy, torch.min(coords, dim=0).values) maxxy = torch.max(maxxy, torch.max(coords, dim=0).values) boxes[idx, :2] = minxy boxes[idx, 2:] = maxxy return Boxes(boxes) def nonempty(self) -> torch.Tensor: """ Find masks that are non-empty. Returns: Tensor: a BoolTensor which represents whether each mask is empty (False) or not (True). """ keep = [1 if len(polygon) > 0 else 0 for polygon in self.polygons] return torch.from_numpy(np.asarray(keep, dtype=np.bool)) def __getitem__(self, item: Union[int, slice, List[int], torch.BoolTensor]) -> "PolygonMasks": """ Support indexing over the instances and return a `PolygonMasks` object. `item` can be: 1. An integer. It will return an object with only one instance. 2. A slice. It will return an object with the selected instances. 3. A list[int]. It will return an object with the selected instances, correpsonding to the indices in the list. 4. A vector mask of type BoolTensor, whose length is num_instances. It will return an object with the instances whose mask is nonzero. """ if isinstance(item, int): selected_polygons = [self.polygons[item]] elif isinstance(item, slice): selected_polygons = self.polygons[item] elif isinstance(item, list): selected_polygons = [self.polygons[i] for i in item] elif isinstance(item, torch.Tensor): # Polygons is a list, so we have to move the indices back to CPU. if item.dtype == torch.bool: assert item.dim() == 1, item.shape item = item.nonzero().squeeze(1).cpu().numpy().tolist() elif item.dtype in [torch.int32, torch.int64]: item = item.cpu().numpy().tolist() else: raise ValueError("Unsupported tensor dtype={} for indexing!".format(item.dtype)) selected_polygons = [self.polygons[i] for i in item] return PolygonMasks(selected_polygons) def __iter__(self) -> Iterator[List[np.ndarray]]: """ Yields: list[ndarray]: the polygons for one instance. Each Tensor is a float64 vector representing a polygon. """ return iter(self.polygons) def __repr__(self) -> str: s = self.__class__.__name__ + "(" s += "num_instances={})".format(len(self.polygons)) return s def __len__(self) -> int: return len(self.polygons) def crop_and_resize(self, boxes: torch.Tensor, mask_size: int) -> torch.Tensor: """ Crop each mask by the given box, and resize results to (mask_size, mask_size). This can be used to prepare training targets for Mask R-CNN. Args: boxes (Tensor): Nx4 tensor storing the boxes for each mask mask_size (int): the size of the rasterized mask. Returns: Tensor: A bool tensor of shape (N, mask_size, mask_size), where N is the number of predicted boxes for this image. """ assert len(boxes) == len(self), "{} != {}".format(len(boxes), len(self)) device = boxes.device # Put boxes on the CPU, as the polygon representation is not efficient GPU-wise # (several small tensors for representing a single instance mask) boxes = boxes.to(torch.device("cpu")) results = [ rasterize_polygons_within_box(poly, box.numpy(), mask_size) for poly, box in zip(self.polygons, boxes) ] """ poly: list[list[float]], the polygons for one instance box: a tensor of shape (4,) """ if len(results) == 0: return torch.empty(0, mask_size, mask_size, dtype=torch.bool, device=device) return torch.stack(results, dim=0).to(device=device) def area(self): """ Computes area of the mask. Only works with Polygons, using the shoelace formula: https://stackoverflow.com/questions/24467972/calculate-area-of-polygon-given-x-y-coordinates Returns: Tensor: a vector, area for each instance """ area = [] for polygons_per_instance in self.polygons: area_per_instance = 0 for p in polygons_per_instance: area_per_instance += polygon_area(p[0::2], p[1::2]) area.append(area_per_instance) return torch.tensor(area)
[docs] @staticmethod def cat(polymasks_list: List["PolygonMasks"]) -> "PolygonMasks": """ Concatenates a list of PolygonMasks into a single PolygonMasks Arguments: polymasks_list (list[PolygonMasks]) Returns: PolygonMasks: the concatenated PolygonMasks """ assert isinstance(polymasks_list, (list, tuple)) assert len(polymasks_list) > 0 assert all(isinstance(polymask, PolygonMasks) for polymask in polymasks_list) cat_polymasks = type(polymasks_list[0])( list(itertools.chain.from_iterable(pm.polygons for pm in polymasks_list)) ) return cat_polymasks
class ROIMasks: """ Represent masks by N smaller masks defined in some ROIs. Once ROI boxes are given, full-image bitmask can be obtained by "pasting" the mask on the region defined by the corresponding ROI box. """ def __init__(self, tensor: torch.Tensor): """ Args: tensor: (N, M, M) mask tensor that defines the mask within each ROI. """ if tensor.dim() != 3: raise ValueError("ROIMasks must take a masks of 3 dimension.") self.tensor = tensor def to(self, device: torch.device) -> "ROIMasks": return ROIMasks(self.tensor.to(device)) @property def device(self) -> device: return self.tensor.device def __len__(self): return self.tensor.shape[0] def __getitem__(self, item) -> "ROIMasks": """ Returns: ROIMasks: Create a new :class:`ROIMasks` by indexing. The following usage are allowed: 1. `new_masks = masks[2:10]`: return a slice of masks. 2. `new_masks = masks[vector]`, where vector is a torch.BoolTensor with `length = len(masks)`. Nonzero elements in the vector will be selected. Note that the returned object might share storage with this object, subject to Pytorch's indexing semantics. """ t = self.tensor[item] if t.dim() != 3: raise ValueError( f"Indexing on ROIMasks with {item} returns a tensor with shape {t.shape}!" ) return ROIMasks(t) @torch.jit.unused def __repr__(self) -> str: s = self.__class__.__name__ + "(" s += "num_instances={})".format(len(self.tensor)) return s @torch.jit.unused def to_bitmasks(self, boxes: torch.Tensor, height, width, threshold=0.5): """ Args: """ from detectron2.layers import paste_masks_in_image paste = retry_if_cuda_oom(paste_masks_in_image) bitmasks = paste( self.tensor, boxes, (height, width), threshold=threshold, ) return BitMasks(bitmasks)