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# Ultralytics 🚀 AGPL-3.0 License - https://ultralytics.com/license | |
""" | |
SAM model interface. | |
This module provides an interface to the Segment Anything Model (SAM) from Ultralytics, designed for real-time image | |
segmentation tasks. The SAM model allows for promptable segmentation with unparalleled versatility in image analysis, | |
and has been trained on the SA-1B dataset. It features zero-shot performance capabilities, enabling it to adapt to new | |
image distributions and tasks without prior knowledge. | |
Key Features: | |
- Promptable segmentation | |
- Real-time performance | |
- Zero-shot transfer capabilities | |
- Trained on SA-1B dataset | |
""" | |
from pathlib import Path | |
from ultralytics.engine.model import Model | |
from ultralytics.utils.torch_utils import model_info | |
from .build import build_sam | |
from .predict import Predictor, SAM2Predictor | |
class SAM(Model): | |
""" | |
SAM (Segment Anything Model) interface class for real-time image segmentation tasks. | |
This class provides an interface to the Segment Anything Model (SAM) from Ultralytics, designed for | |
promptable segmentation with versatility in image analysis. It supports various prompts such as bounding | |
boxes, points, or labels, and features zero-shot performance capabilities. | |
Attributes: | |
model (torch.nn.Module): The loaded SAM model. | |
is_sam2 (bool): Indicates whether the model is SAM2 variant. | |
task (str): The task type, set to "segment" for SAM models. | |
Methods: | |
predict: Performs segmentation prediction on the given image or video source. | |
info: Logs information about the SAM model. | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> results = sam.predict("image.jpg", points=[[500, 375]]) | |
>>> for r in results: | |
>>> print(f"Detected {len(r.masks)} masks") | |
""" | |
def __init__(self, model="sam_b.pt") -> None: | |
""" | |
Initializes the SAM (Segment Anything Model) instance. | |
Args: | |
model (str): Path to the pre-trained SAM model file. File should have a .pt or .pth extension. | |
Raises: | |
NotImplementedError: If the model file extension is not .pt or .pth. | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> print(sam.is_sam2) | |
""" | |
if model and Path(model).suffix not in {".pt", ".pth"}: | |
raise NotImplementedError("SAM prediction requires pre-trained *.pt or *.pth model.") | |
self.is_sam2 = "sam2" in Path(model).stem | |
super().__init__(model=model, task="segment") | |
def _load(self, weights: str, task=None): | |
""" | |
Loads the specified weights into the SAM model. | |
This method initializes the SAM model with the provided weights file, setting up the model architecture | |
and loading the pre-trained parameters. | |
Args: | |
weights (str): Path to the weights file. Should be a .pt or .pth file containing the model parameters. | |
task (str | None): Task name. If provided, it specifies the particular task the model is being loaded for. | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> sam._load("path/to/custom_weights.pt") | |
""" | |
self.model = build_sam(weights) | |
def predict(self, source, stream=False, bboxes=None, points=None, labels=None, **kwargs): | |
""" | |
Performs segmentation prediction on the given image or video source. | |
Args: | |
source (str | PIL.Image | numpy.ndarray): Path to the image or video file, or a PIL.Image object, or | |
a numpy.ndarray object. | |
stream (bool): If True, enables real-time streaming. | |
bboxes (List[List[float]] | None): List of bounding box coordinates for prompted segmentation. | |
points (List[List[float]] | None): List of points for prompted segmentation. | |
labels (List[int] | None): List of labels for prompted segmentation. | |
**kwargs (Any): Additional keyword arguments for prediction. | |
Returns: | |
(List): The model predictions. | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> results = sam.predict("image.jpg", points=[[500, 375]]) | |
>>> for r in results: | |
... print(f"Detected {len(r.masks)} masks") | |
""" | |
overrides = dict(conf=0.25, task="segment", mode="predict", imgsz=1024) | |
kwargs = {**overrides, **kwargs} | |
prompts = dict(bboxes=bboxes, points=points, labels=labels) | |
return super().predict(source, stream, prompts=prompts, **kwargs) | |
def __call__(self, source=None, stream=False, bboxes=None, points=None, labels=None, **kwargs): | |
""" | |
Performs segmentation prediction on the given image or video source. | |
This method is an alias for the 'predict' method, providing a convenient way to call the SAM model | |
for segmentation tasks. | |
Args: | |
source (str | PIL.Image | numpy.ndarray | None): Path to the image or video file, or a PIL.Image | |
object, or a numpy.ndarray object. | |
stream (bool): If True, enables real-time streaming. | |
bboxes (List[List[float]] | None): List of bounding box coordinates for prompted segmentation. | |
points (List[List[float]] | None): List of points for prompted segmentation. | |
labels (List[int] | None): List of labels for prompted segmentation. | |
**kwargs (Any): Additional keyword arguments to be passed to the predict method. | |
Returns: | |
(List): The model predictions, typically containing segmentation masks and other relevant information. | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> results = sam("image.jpg", points=[[500, 375]]) | |
>>> print(f"Detected {len(results[0].masks)} masks") | |
""" | |
return self.predict(source, stream, bboxes, points, labels, **kwargs) | |
def info(self, detailed=False, verbose=True): | |
""" | |
Logs information about the SAM model. | |
This method provides details about the Segment Anything Model (SAM), including its architecture, | |
parameters, and computational requirements. | |
Args: | |
detailed (bool): If True, displays detailed information about the model layers and operations. | |
verbose (bool): If True, prints the information to the console. | |
Returns: | |
(tuple): A tuple containing the model's information (string representations of the model). | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> info = sam.info() | |
>>> print(info[0]) # Print summary information | |
""" | |
return model_info(self.model, detailed=detailed, verbose=verbose) | |
def task_map(self): | |
""" | |
Provides a mapping from the 'segment' task to its corresponding 'Predictor'. | |
Returns: | |
(Dict[str, Type[Predictor]]): A dictionary mapping the 'segment' task to its corresponding Predictor | |
class. For SAM2 models, it maps to SAM2Predictor, otherwise to the standard Predictor. | |
Examples: | |
>>> sam = SAM("sam_b.pt") | |
>>> task_map = sam.task_map | |
>>> print(task_map) | |
{'segment': <class 'ultralytics.models.sam.predict.Predictor'>} | |
""" | |
return {"segment": {"predictor": SAM2Predictor if self.is_sam2 else Predictor}} | |