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			| 18957c7 | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 | # Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
# This source code is licensed under the license found in the
# LICENSE file in the root directory of this source tree.
import numpy as np
import torch
from torchvision.ops.boxes import batched_nms, box_area  # type: ignore
from typing import Any, Dict, List, Optional, Tuple
from .modeling import Sam
from .predictor import SamPredictor
from .utils.amg import (
    MaskData,
    area_from_rle,
    batch_iterator,
    batched_mask_to_box,
    box_xyxy_to_xywh,
    build_all_layer_point_grids,
    calculate_stability_score,
    coco_encode_rle,
    generate_crop_boxes,
    is_box_near_crop_edge,
    mask_to_rle_pytorch,
    remove_small_regions,
    rle_to_mask,
    uncrop_boxes_xyxy,
    uncrop_masks,
    uncrop_points,
)
class SamAutomaticMaskGenerator:
    def __init__(
        self,
        model: Sam,
        points_per_side: Optional[int] = 32,
        points_per_batch: int = 64,
        pred_iou_thresh: float = 0.88,
        stability_score_thresh: float = 0.95,
        stability_score_offset: float = 1.0,
        box_nms_thresh: float = 0.7,
        crop_n_layers: int = 0,
        crop_nms_thresh: float = 0.7,
        crop_overlap_ratio: float = 512 / 1500,
        crop_n_points_downscale_factor: int = 1,
        point_grids: Optional[List[np.ndarray]] = None,
        min_mask_region_area: int = 0,
        output_mode: str = "binary_mask",
    ) -> None:
        """
        Using a SAM model, generates masks for the entire image.
        Generates a grid of point prompts over the image, then filters
        low quality and duplicate masks. The default settings are chosen
        for SAM with a ViT-H backbone.
        Arguments:
          model (Sam): The SAM model to use for mask prediction.
          points_per_side (int or None): The number of points to be sampled
            along one side of the image. The total number of points is
            points_per_side**2. If None, 'point_grids' must provide explicit
            point sampling.
          points_per_batch (int): Sets the number of points run simultaneously
            by the model. Higher numbers may be faster but use more GPU memory.
          pred_iou_thresh (float): A filtering threshold in [0,1], using the
            model's predicted mask quality.
          stability_score_thresh (float): A filtering threshold in [0,1], using
            the stability of the mask under changes to the cutoff used to binarize
            the model's mask predictions.
          stability_score_offset (float): The amount to shift the cutoff when
            calculated the stability score.
          box_nms_thresh (float): The box IoU cutoff used by non-maximal
            suppression to filter duplicate masks.
          crops_n_layers (int): If >0, mask prediction will be run again on
            crops of the image. Sets the number of layers to run, where each
            layer has 2**i_layer number of image crops.
          crops_nms_thresh (float): The box IoU cutoff used by non-maximal
            suppression to filter duplicate masks between different crops.
          crop_overlap_ratio (float): Sets the degree to which crops overlap.
            In the first crop layer, crops will overlap by this fraction of
            the image length. Later layers with more crops scale down this overlap.
          crop_n_points_downscale_factor (int): The number of points-per-side
            sampled in layer n is scaled down by crop_n_points_downscale_factor**n.
          point_grids (list(np.ndarray) or None): A list over explicit grids
            of points used for sampling, normalized to [0,1]. The nth grid in the
            list is used in the nth crop layer. Exclusive with points_per_side.
          min_mask_region_area (int): If >0, postprocessing will be applied
            to remove disconnected regions and holes in masks with area smaller
            than min_mask_region_area. Requires opencv.
          output_mode (str): The form masks are returned in. Can be 'binary_mask',
            'uncompressed_rle', or 'coco_rle'. 'coco_rle' requires pycocotools.
            For large resolutions, 'binary_mask' may consume large amounts of
            memory.
        """
        assert (points_per_side is None) != (
            point_grids is None
        ), "Exactly one of points_per_side or point_grid must be provided."
        if points_per_side is not None:
            self.point_grids = build_all_layer_point_grids(
                points_per_side,
                crop_n_layers,
                crop_n_points_downscale_factor,
            )
        elif point_grids is not None:
            self.point_grids = point_grids
        else:
            raise ValueError("Can't have both points_per_side and point_grid be None.")
        assert output_mode in [
            "binary_mask",
            "uncompressed_rle",
            "coco_rle",
        ], f"Unknown output_mode {output_mode}."
        if output_mode == "coco_rle":
            from pycocotools import mask as mask_utils  # type: ignore # noqa: F401
        if min_mask_region_area > 0:
            import cv2  # type: ignore # noqa: F401
        self.predictor = SamPredictor(model)
        self.points_per_batch = points_per_batch
        self.pred_iou_thresh = pred_iou_thresh
        self.stability_score_thresh = stability_score_thresh
        self.stability_score_offset = stability_score_offset
        self.box_nms_thresh = box_nms_thresh
        self.crop_n_layers = crop_n_layers
        self.crop_nms_thresh = crop_nms_thresh
        self.crop_overlap_ratio = crop_overlap_ratio
        self.crop_n_points_downscale_factor = crop_n_points_downscale_factor
        self.min_mask_region_area = min_mask_region_area
        self.output_mode = output_mode
    @torch.no_grad()
    def generate(self, image: np.ndarray) -> List[Dict[str, Any]]:
        """
        Generates masks for the given image.
        Arguments:
          image (np.ndarray): The image to generate masks for, in HWC uint8 format.
        Returns:
           list(dict(str, any)): A list over records for masks. Each record is
             a dict containing the following keys:
               segmentation (dict(str, any) or np.ndarray): The mask. If
                 output_mode='binary_mask', is an array of shape HW. Otherwise,
                 is a dictionary containing the RLE.
               bbox (list(float)): The box around the mask, in XYWH format.
               area (int): The area in pixels of the mask.
               predicted_iou (float): The model's own prediction of the mask's
                 quality. This is filtered by the pred_iou_thresh parameter.
               point_coords (list(list(float))): The point coordinates input
                 to the model to generate this mask.
               stability_score (float): A measure of the mask's quality. This
                 is filtered on using the stability_score_thresh parameter.
               crop_box (list(float)): The crop of the image used to generate
                 the mask, given in XYWH format.
        """
        # Generate masks
        mask_data = self._generate_masks(image)
        # Filter small disconnected regions and holes in masks
        if self.min_mask_region_area > 0:
            mask_data = self.postprocess_small_regions(
                mask_data,
                self.min_mask_region_area,
                max(self.box_nms_thresh, self.crop_nms_thresh),
            )
        # Encode masks
        if self.output_mode == "coco_rle":
            mask_data["segmentations"] = [coco_encode_rle(rle) for rle in mask_data["rles"]]
        elif self.output_mode == "binary_mask":
            mask_data["segmentations"] = [rle_to_mask(rle) for rle in mask_data["rles"]]
        else:
            mask_data["segmentations"] = mask_data["rles"]
        # Write mask records
        curr_anns = []
        for idx in range(len(mask_data["segmentations"])):
            ann = {
                "segmentation": mask_data["segmentations"][idx],
                "area": area_from_rle(mask_data["rles"][idx]),
                "bbox": box_xyxy_to_xywh(mask_data["boxes"][idx]).tolist(),
                "predicted_iou": mask_data["iou_preds"][idx].item(),
                "point_coords": [mask_data["points"][idx].tolist()],
                "stability_score": mask_data["stability_score"][idx].item(),
                "crop_box": box_xyxy_to_xywh(mask_data["crop_boxes"][idx]).tolist(),
                "feat": mask_data["feats"][idx].tolist(),
            }
            curr_anns.append(ann)
        return curr_anns
    def _generate_masks(self, image: np.ndarray) -> MaskData:
        orig_size = image.shape[:2]
        crop_boxes, layer_idxs = generate_crop_boxes(
            orig_size, self.crop_n_layers, self.crop_overlap_ratio
        )
        # Iterate over image crops
        data = MaskData()
        for crop_box, layer_idx in zip(crop_boxes, layer_idxs):
            crop_data = self._process_crop(image, crop_box, layer_idx, orig_size)
            data.cat(crop_data)
        # Remove duplicate masks between crops
        if len(crop_boxes) > 1:
            # Prefer masks from smaller crops
            scores = 1 / box_area(data["crop_boxes"])
            scores = scores.to(data["boxes"].device)
            keep_by_nms = batched_nms(
                data["boxes"].float(),
                scores,
                torch.zeros(len(data["boxes"])),  # categories
                iou_threshold=self.crop_nms_thresh,
            )
            data.filter(keep_by_nms)
        data.to_numpy()
        return data
    def _process_crop(
        self,
        image: np.ndarray,
        crop_box: List[int],
        crop_layer_idx: int,
        orig_size: Tuple[int, ...],
    ) -> MaskData:
        # Crop the image and calculate embeddings
        x0, y0, x1, y1 = crop_box
        cropped_im = image[y0:y1, x0:x1, :]
        cropped_im_size = cropped_im.shape[:2]
        self.predictor.set_image(cropped_im)
        # Get points for this crop
        points_scale = np.array(cropped_im_size)[None, ::-1]
        points_for_image = self.point_grids[crop_layer_idx] * points_scale
        # Generate masks for this crop in batches
        data = MaskData()
        for (points,) in batch_iterator(self.points_per_batch, points_for_image):
            batch_data = self._process_batch(points, cropped_im_size, crop_box, orig_size)
            data.cat(batch_data)
            del batch_data
        self.predictor.reset_image()
        # Remove duplicates within this crop.
        keep_by_nms = batched_nms(
            data["boxes"].float(),
            data["iou_preds"],
            torch.zeros(len(data["boxes"])),  # categories
            iou_threshold=self.box_nms_thresh,
        )
        data.filter(keep_by_nms)
        # Return to the original image frame
        data["boxes"] = uncrop_boxes_xyxy(data["boxes"], crop_box)
        data["points"] = uncrop_points(data["points"], crop_box)
        data["crop_boxes"] = torch.tensor([crop_box for _ in range(len(data["rles"]))])
        return data
    def _process_batch(
        self,
        points: np.ndarray,
        im_size: Tuple[int, ...],
        crop_box: List[int],
        orig_size: Tuple[int, ...],
    ) -> MaskData:
        orig_h, orig_w = orig_size
        # Run model on this batch
        transformed_points = self.predictor.transform.apply_coords(points, im_size)
        in_points = torch.as_tensor(transformed_points, device=self.predictor.device)
        in_labels = torch.ones(in_points.shape[0], dtype=torch.int, device=in_points.device)
        masks, iou_preds, _, feats = self.predictor.predict_torch(
            in_points[:, None, :],
            in_labels[:, None],
            multimask_output=True,
            return_logits=True,
        )
        # Serialize predictions and store in MaskData
        data = MaskData(
            feats=feats.flatten(0, 1),
            masks=masks.flatten(0, 1),
            iou_preds=iou_preds.flatten(0, 1),
            points=torch.as_tensor(points.repeat(masks.shape[1], axis=0)),
        )
        del masks
        # Filter by predicted IoU
        if self.pred_iou_thresh > 0.0:
            keep_mask = data["iou_preds"] > self.pred_iou_thresh
            data.filter(keep_mask)
        # Calculate stability score
        data["stability_score"] = calculate_stability_score(
            data["masks"], self.predictor.model.mask_threshold, self.stability_score_offset
        )
        if self.stability_score_thresh > 0.0:
            keep_mask = data["stability_score"] >= self.stability_score_thresh
            data.filter(keep_mask)
        # Threshold masks and calculate boxes
        data["masks"] = data["masks"] > self.predictor.model.mask_threshold
        data["boxes"] = batched_mask_to_box(data["masks"])
        # Filter boxes that touch crop boundaries
        keep_mask = ~is_box_near_crop_edge(data["boxes"], crop_box, [0, 0, orig_w, orig_h])
        if not torch.all(keep_mask):
            data.filter(keep_mask)
        # Compress to RLE
        data["masks"] = uncrop_masks(data["masks"], crop_box, orig_h, orig_w)
        data["rles"] = mask_to_rle_pytorch(data["masks"])
        del data["masks"]
        return data
    @staticmethod
    def postprocess_small_regions(
        mask_data: MaskData, min_area: int, nms_thresh: float
    ) -> MaskData:
        """
        Removes small disconnected regions and holes in masks, then reruns
        box NMS to remove any new duplicates.
        Edits mask_data in place.
        Requires open-cv as a dependency.
        """
        if len(mask_data["rles"]) == 0:
            return mask_data
        # Filter small disconnected regions and holes
        new_masks = []
        scores = []
        for rle in mask_data["rles"]:
            mask = rle_to_mask(rle)
            mask, changed = remove_small_regions(mask, min_area, mode="holes")
            unchanged = not changed
            mask, changed = remove_small_regions(mask, min_area, mode="islands")
            unchanged = unchanged and not changed
            new_masks.append(torch.as_tensor(mask).unsqueeze(0))
            # Give score=0 to changed masks and score=1 to unchanged masks
            # so NMS will prefer ones that didn't need postprocessing
            scores.append(float(unchanged))
        # Recalculate boxes and remove any new duplicates
        masks = torch.cat(new_masks, dim=0)
        boxes = batched_mask_to_box(masks)
        keep_by_nms = batched_nms(
            boxes.float(),
            torch.as_tensor(scores),
            torch.zeros(len(boxes)),  # categories
            iou_threshold=nms_thresh,
        )
        # Only recalculate RLEs for masks that have changed
        for i_mask in keep_by_nms:
            if scores[i_mask] == 0.0:
                mask_torch = masks[i_mask].unsqueeze(0)
                mask_data["rles"][i_mask] = mask_to_rle_pytorch(mask_torch)[0]
                mask_data["boxes"][i_mask] = boxes[i_mask]  # update res directly
        mask_data.filter(keep_by_nms)
        return mask_data
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