neuralib.segmentation.cellpose.core
- class neuralib.segmentation.cellpose.core.AbstractSegmentationOption[source]
- DESCRIPTION: str = 'ABC for cellular segmentation'
parser description.
- EX_GROUP_SOURCE = 'EX_GROUP_SOURCE'
- file: Path
image file path
- directory: Path
images directory for batch processing
- directory_suffix: str
suffix in batch mode
- save_ij_roi: bool
if save also the imageJ/Fiji compatible .roi file
- force_re_eval: bool
force re-evaluate the result
- model: str
which pretrained model
- no_normalize: bool
NOT DO Percentile-based image normalization for eval
- napari_view: bool
view in napari
- property file_mode: bool
Flag file mode
- property batch_mode: bool
Flag batch mode
- raw_image()[source]
Load image from file and convert to grayscale
- Returns:
Array[float, [H, W]]
- Return type:
ndarray
- foreach_raw_image()[source]
Load image from a directory and convert to grayscale
- Returns:
Tuple of filepath and image Array[float, [H, W]]
- Return type:
Iterable[tuple[Path, ndarray]]
- foreach_normalize_image()[source]
Normalize the image in batch mode
- Returns:
Tuple of filepath and image Array[float, [H, W]]
- Return type:
Iterable[tuple[Path, ndarray]]
- abstract seg_output(filepath)[source]
Get segmented output save path
- Parameters:
filepath (Path) – filepath for image
- Returns:
segmented output save path
- Return type:
Path
- ij_roi_output(filepath)[source]
Get imageJ/Fiji
.roioutput save path- Parameters:
filepath (Path) – filepath for image
- Returns:
ij roi output save path
- Return type:
Path
- class neuralib.segmentation.cellpose.core.AbstractCellPoseOption[source]
- DESCRIPTION: str = 'ABC for GUI Cellpose'
parser description.
- model: Literal['cyto', 'cyto2', 'cyto3']
which pretrained model
- chan_seg: int
channel for segmentation default:{‘none’: -1, ‘gray’: 0, ‘red’: 1, ‘green’: 2, ‘blue’: 3}
- chan_nuclear: int
nuclear channel
- diameter: int
diameter for each neuron (number of each pixel)
- cellpose_view: bool
launch cellpose gui for the analyzed result
- final class neuralib.segmentation.cellpose.core.CellPoseEvalResult[source]
Cellpose results
Dimension parameters:
N = Number of segmented cell
W = Image width
H = Image height
- filename: str
image file name
- image: ndarray | list[ndarray]
image array
- diameter: float
neuronal diameter
- chan_choose: list[int]
[chan_seg, chan_nuclear]
- masks: ndarray
each pixel in the image is assigned to an ROI (H, W) list of 2D arrays, labelled image, where 0=no masks; 1,2,…=mask labels
- flows: list[ndarray]
flows[0] is XY flow in RGB, flows[1] is the cell probability in range 0-255 instead of 0.0 to 1.0, flows[2] is Z flow in range 0-255 (if it exists, otherwise zeros), flows[3] is [dY, dX, cellprob] (or [dZ, dY, dX, cellprob] for 3D), flows[4] is pixel destinations (for internal use)
- styles: list[ndarray]
list of 1D arrays of length 256, style vector summarizing each image, also used to estimate size of objects in image
- colors: ndarray | None
colors for ROIs (N, 3)
- manual_changes: list[Any] | None
- est_diam: float | None
estimated diameter (if run on command line)
- model_path: int
- flow_threshold: float | None
- cellprob_threshold: float
- normalize_params: NormParams | None
- img_restore: list[ndarray] | None
- restore: str | None
- ratio: float
- __init__(filename, image, diameter, chan_choose, masks, flows=NOTHING, styles=NOTHING, *, colors=None, manual_changes=None, est_diam=None, model_path=0, flow_threshold=None, cellprob_threshold=0, normalize_params=None, img_restore=None, restore=None, ratio=1.0, outlines=array([], dtype=float64), ismanual=array([], dtype=float64))
Method generated by attrs for class CellPoseEvalResult.
- Parameters:
filename (str)
image (ndarray | list[ndarray])
diameter (float)
chan_choose (list[int])
masks (ndarray)
flows (list[ndarray])
styles (list[ndarray])
colors (ndarray | None)
manual_changes (list[Any] | None)
est_diam (float | None)
model_path (int)
flow_threshold (float | None)
cellprob_threshold (float)
normalize_params (NormParams | None)
img_restore (list[ndarray] | None)
restore (str | None)
ratio (float)
outlines (ndarray)
ismanual (ndarray)
- Return type:
None
- outlines: ndarray
outlines of ROIs. Array[uint16, [H, W]]
- ismanual: ndarray
whether or not mask k was manually drawn or computed by the cellpose algorithm. Array[bool, N]
- classmethod load(seg_file)[source]
- Parameters:
seg_file (str | Path | bytes | BinaryIO | BufferedIOBase | BufferedReader)
- Return type:
Self
- save_seg_file(image_file)[source]
Save as
seg.npyfile`- Parameters:
image_file (str)
- Return type:
None
- save_roi(output_file)[source]
Save as imageJ
.roifile. CHECKOUT native BUG: https://github.com/MouseLand/cellpose/issues/969- Parameters:
output_file (str | Path | bytes | BinaryIO | BufferedIOBase | BufferedReader)
- Return type:
None
- property points: ndarray
Calculate center of each segmented area in pixel. Array[int, N]