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import os
import sys
from typing import List, Optional, Sequence, Tuple
import numpy as np # type: ignore
from tifffile import TiffFile # type: ignore
from skimage.exposure import rescale_intensity # type: ignore
from skimage.feature import peak_local_max, blob_log # type: ignore
from skimage.color import gray2rgb # type: ignore
from skimage.draw import circle_perimeter # type: ignore
from skimage.util import img_as_float # type: ignore
from skimage.filters import threshold_otsu, gaussian, threshold_sauvola # type: ignore
from skimage.morphology import ( # type: ignore
remove_small_objects,
remove_small_holes,
binary_closing,
disk,
)
from skimage.measure import regionprops # type: ignore
from skimage.segmentation import watershed # type: ignore
from skimage.segmentation import find_boundaries # type: ignore
import scipy.ndimage as ndi # type: ignore
from PIL import Image, ImageDraw, ImageFont # type: ignore
import imageio.v3 as iio # type: ignore
def _select_series_and_level(
series_list: Sequence,
preferred_series_index: int,
preferred_level_index: Optional[int],
max_dim: int = 2048,
):
"""
Choose a series and pyramid level that will fit comfortably in memory.
- If preferred options are provided and valid, use them.
- Otherwise choose the first series with a level whose max(Y,X) <= max_dim,
falling back to the coarsest available level.
"""
if not series_list:
raise ValueError("No series found in the TIFF file.")
# Try to honor the user's preferred series and level first
if 0 <= preferred_series_index < len(series_list):
series = series_list[preferred_series_index]
levels = getattr(series, "levels", None) or [series]
if preferred_level_index is not None:
if 0 <= preferred_level_index < len(levels):
return preferred_series_index, preferred_level_index
else:
raise ValueError(
f"Requested level {preferred_level_index} is out of range for series {preferred_series_index}"
)
# Auto-pick a level for this series
best_level = _choose_level_index(levels, max_dim=max_dim)
return preferred_series_index, best_level
# Otherwise, search across series to find a good level
for s_idx, s in enumerate(series_list):
levels = getattr(s, "levels", None) or [s]
level_idx = _choose_level_index(levels, max_dim=max_dim)
if level_idx is not None:
return s_idx, level_idx
# Fallback: use the first series, coarsest level
levels = getattr(series_list[0], "levels", None) or [series_list[0]]
return 0, len(levels) - 1
def _choose_level_index(levels: Sequence, max_dim: int = 2048) -> Optional[int]:
"""Pick the smallest level whose largest spatial dimension <= max_dim."""
chosen = None
for idx, level in enumerate(levels):
shape = level.shape
axes = getattr(level, "axes", None) or ""
# Determine Y, X dims
y_idx = axes.find("Y") if "Y" in axes else None
x_idx = axes.find("X") if "X" in axes else None
if y_idx is None or x_idx is None:
continue
y, x = shape[y_idx], shape[x_idx]
if max(y, x) <= max_dim:
chosen = idx
break
return chosen if chosen is not None else (len(levels) - 1 if levels else None)
def _axis_index(axes: str, axis_label: str) -> Optional[int]:
return axes.find(axis_label) if axis_label in axes else None
def _ensure_channel_first_2d(
data: np.ndarray,
axes: str,
keep_time_index: int = 0,
projection_mode: str = "max",
) -> Tuple[np.ndarray, List[str]]:
"""
Return data shaped as (C, Y, X) for preview generation.
- Select a single timepoint (if T present)
- Project Z using max or take middle slice
"""
arr = data
axes_str = axes
# Handle time
t_idx = _axis_index(axes_str, "T")
if t_idx is not None and arr.shape[t_idx] > 1:
indexer = [slice(None)] * arr.ndim
indexer[t_idx] = min(keep_time_index, arr.shape[t_idx] - 1)
arr = arr[tuple(indexer)]
axes_str = axes_str.replace("T", "")
# Handle Z projection or middle slice
z_idx = _axis_index(axes_str, "Z")
if z_idx is not None and arr.shape[z_idx] > 1:
if projection_mode == "max":
arr = arr.max(axis=z_idx)
else:
mid = arr.shape[z_idx] // 2
arr = np.take(arr, indices=mid, axis=z_idx)
axes_str = axes_str.replace("Z", "")
# Ensure axes has Y and X
if "Y" not in axes_str or "X" not in axes_str:
raise ValueError(f"Cannot identify spatial axes in order: {axes_str}")
# Move channel axis to front if present; otherwise create a singleton channel
c_idx = _axis_index(axes_str, "C")
if c_idx is None:
# Insert a channel dimension at front
# Current order likely YX or others; move Y,X to last two positions
y_idx = _axis_index(axes_str, "Y")
x_idx = _axis_index(axes_str, "X")
perm = [i for i in range(arr.ndim) if i not in (y_idx, x_idx)] + [y_idx, x_idx]
arr = np.transpose(arr, perm)
r = arr[np.newaxis, ...] # (1, Y, X)
channel_names = ["channel0"]
return r, channel_names
# Reorder to C, Y, X
# Determine positions of C,Y,X in current array
current_axes = list(axes_str)
order = [c_idx, current_axes.index("Y"), current_axes.index("X")]
arr = np.transpose(arr, order)
# Try to name channels 0..C-1; OME metadata parsing could improve this later
num_c = arr.shape[0]
channel_names = [f"channel{idx}" for idx in range(num_c)]
return arr, channel_names
def _contrast_stretch(
img: np.ndarray,
low_percentile: float = 1.0,
high_percentile: float = 99.9,
) -> np.ndarray:
"""Apply percentile-based contrast stretching per-channel to uint8 range."""
if img.ndim == 2:
lo, hi = np.percentile(img, [low_percentile, high_percentile])
if hi <= lo:
return np.zeros_like(img, dtype=np.uint8)
return rescale_intensity(img, in_range=(lo, hi), out_range=(0, 255)).astype(
np.uint8
)
if img.ndim == 3:
# Assume (C, Y, X)
out = np.empty((img.shape[0], img.shape[1], img.shape[2]), dtype=np.uint8)
for c in range(img.shape[0]):
lo, hi = np.percentile(img[c], [low_percentile, high_percentile])
if hi <= lo:
out[c] = 0
else:
out[c] = rescale_intensity(
img[c], in_range=(lo, hi), out_range=(0, 255)
).astype(np.uint8)
return out
raise ValueError("Expected 2D or 3D array for contrast stretching")
def _save_previews(
arr_cyx: np.ndarray,
channel_names: List[str],
output_dir: str,
base_name: str,
) -> List[str]:
"""Save one PNG per channel and an RGB composite if possible. Returns file paths."""
os.makedirs(output_dir, exist_ok=True)
saved_paths: List[str] = []
# Save per-channel grayscale previews
for c_idx, ch_name in enumerate(channel_names):
img8 = _contrast_stretch(arr_cyx[c_idx])
# Save without original image name prefix
out_path = os.path.join(output_dir, f"{ch_name}.png")
iio.imwrite(out_path, img8)
saved_paths.append(out_path)
# If at least 3 channels, make an RGB composite using first three channels
if arr_cyx.shape[0] >= 3:
r = _contrast_stretch(arr_cyx[0])
g = _contrast_stretch(arr_cyx[1])
b = _contrast_stretch(arr_cyx[2])
rgb = np.stack([r, g, b], axis=-1) # (Y, X, 3)
out_path = os.path.join(output_dir, "composite_RGB.png")
iio.imwrite(out_path, rgb)
saved_paths.append(out_path)
return saved_paths
def inspect_and_preview(
filepath: str,
series_index: int = 0,
level_index: Optional[int] = None,
keep_time_index: int = 0,
projection_mode: str = "max",
preview_max_dim: int = 2048,
output_dir: Optional[str] = None,
) -> List[str]:
"""
Inspect a TIFF/OME-TIFF and save quicklook previews.
Returns list of saved image paths.
"""
if not os.path.exists(filepath):
raise FileNotFoundError(f"File not found: {filepath}")
with TiffFile(filepath) as tf:
print(f"Path: {filepath}")
print(f"Is OME-TIFF: {getattr(tf, 'is_ome', False)}")
print(f"Pages: {len(tf.pages)} Series: {len(tf.series)}")
for idx, s in enumerate(tf.series):
axes = getattr(s, "axes", "")
shape = getattr(s, "shape", None)
levels = getattr(s, "levels", None)
lvl_str = f" levels={len(levels)}" if levels else ""
print(f" Series {idx}: shape={shape} axes='{axes}'{lvl_str}")
# Choose series and level
s_idx, l_idx = _select_series_and_level(
tf.series, series_index, level_index, max_dim=preview_max_dim
)
series = tf.series[s_idx]
levels = getattr(series, "levels", None) or [series]
level = levels[l_idx]
print(
f"Using series {s_idx}, level {l_idx}: shape={level.shape} axes='{level.axes}'"
)
# Read the selected level into memory
arr = level.asarray()
print(f"Loaded array dtype={arr.dtype} shape={arr.shape}")
# Reorder and project to (C, Y, X)
arr_cyx, channel_names = _ensure_channel_first_2d(
arr,
level.axes,
keep_time_index=keep_time_index,
projection_mode=projection_mode,
)
print(f"Preview array shape (C,Y,X) = {arr_cyx.shape}")
# Define output directory
if output_dir is None:
parent = os.path.dirname(filepath)
stem = os.path.splitext(os.path.basename(filepath))[0]
output_dir = os.path.join(parent, f"{stem}__previews")
base_name = os.path.splitext(os.path.basename(filepath))[0]
saved = _save_previews(arr_cyx, channel_names, output_dir, base_name)
print("Saved previews:")
for p in saved:
print(f" {p}")
return saved
def parse_args(argv: Optional[Sequence[str]] = None) -> argparse.Namespace:
parser = argparse.ArgumentParser(
description="Inspect TIFF/OME-TIFF and export quicklook previews, or count dots on a preview image."
)
# Inspection args
parser.add_argument("--input", required=False, help="Path to .tif/.tiff file")
parser.add_argument(
"--series", type=int, default=0, help="Series index (default 0)"
)
parser.add_argument(
"--level", type=int, default=None, help="Pyramid level index; default auto"
)
parser.add_argument(
"--time", type=int, default=0, help="Time index to preview if T present"
)
parser.add_argument(
"--zproject",
choices=["max", "mid"],
default="max",
help="Z handling: maximum projection or middle slice",
)
parser.add_argument(
"--max-dim",
type=int,
default=2048,
help="Target max spatial dimension for preview level selection",
)
parser.add_argument(
"--output-dir", type=str, default=None, help="Output directory for previews"
)
# Dot counting on a PNG preview
parser.add_argument(
"--count-image",
type=str,
default=None,
help="Path to a grayscale preview PNG to count dots on",
)
parser.add_argument(
"--min-sigma",
type=float,
default=1.5,
help="Minimum sigma for LoG blob detection",
)
parser.add_argument(
"--max-sigma",
type=float,
default=6.0,
help="Maximum sigma for LoG blob detection",
)
parser.add_argument(
"--num-sigma",
type=int,
default=10,
help="Number of sigma levels between min and max",
)
parser.add_argument(
"--threshold",
type=float,
default=0.03,
help="Absolute threshold for LoG detection (0-1 after normalization)",
)
parser.add_argument(
"--overlap",
type=float,
default=0.5,
help="Blob overlap merging parameter (0-1)",
)
parser.add_argument(
"--downsample",
type=int,
default=1,
help="Integer downsample factor before detection (speedup)",
)
# Thresholding controls
parser.add_argument(
"--threshold-mode",
choices=["otsu", "percentile", "sauvola"],
default="otsu",
help="How to compute the foreground threshold",
)
parser.add_argument(
"--thresh-percent",
type=float,
default=85.0,
help="If percentile mode, use this intensity percentile (0-100)",
)
parser.add_argument(
"--threshold-scale",
type=float,
default=1.0,
help="Scale the computed threshold (e.g., 0.9 to include dimmer objects)",
)
parser.add_argument(
"--ws-footprint",
type=int,
default=5,
help="Footprint (square side) for peak-local-max in watershed splitting",
)
parser.add_argument(
"--closing-radius",
type=int,
default=0,
help="Radius for morphological closing (0 disables)",
)
parser.add_argument(
"--seed-mode",
choices=["distance", "log", "both"],
default="both",
help="How to generate watershed seeds: distance map peaks, LoG blobs, or both",
)
parser.add_argument(
"--min-sep-px",
type=int,
default=3,
help="Minimum separation (in detection pixels) between seeds",
)
parser.add_argument(
"--log-threshold",
type=float,
default=0.02,
help="LoG detection threshold (relative to image scale)",
)
parser.add_argument(
"--circularity-min",
type=float,
default=0.25,
help="Minimum circularity (4*pi*area/perimeter^2) to accept a region",
)
parser.add_argument(
"--max-diam-um",
type=float,
default=None,
help="Maximum acceptable circle diameter in microns (optional)",
)
parser.add_argument(
"--min-contrast",
type=float,
default=0.0,
help="Minimum center-minus-ring contrast (0-1 normalized) to keep a detection",
)
parser.add_argument(
"--hmax",
type=float,
default=0.0,
help="h value for h-maxima on distance map to generate more watershed markers (0 disables)",
)
parser.add_argument(
"--min-area-px",
type=int,
default=9,
help="Minimum region area in pixels (detection scale) before measurements",
)
parser.add_argument(
"--debug",
action="store_true",
help="Save intermediate images (mask, distance) to the output folder",
)
# Physical units
parser.add_argument(
"--width-um",
type=float,
default=None,
help="Image width in microns (for physical-size filtering)",
)
parser.add_argument(
"--height-um",
type=float,
default=None,
help="Image height in microns (for physical-size filtering)",
)
parser.add_argument(
"--min-diam-um",
type=float,
default=None,
help="Minimum acceptable circle diameter in microns",
)
return parser.parse_args(argv)
def _count_dots_on_preview(
preview_png_path: str,
min_sigma: float,
max_sigma: float,
num_sigma: int,
threshold: float,
overlap: float,
downsample: int,
width_um: Optional[float] = None,
height_um: Optional[float] = None,
min_diam_um: Optional[float] = None,
threshold_mode: str = "otsu",
thresh_percent: float = 85.0,
threshold_scale: float = 1.0,
ws_footprint: int = 5,
circularity_min: float = 0.25,
min_area_px: int = 9,
max_diam_um: Optional[float] = None,
debug: bool = False,
closing_radius: int = 0,
min_contrast: float = 0.0,
hmax: float = 0.0,
seed_mode: str = "both",
min_sep_px: int = 3,
log_threshold: float = 0.02,
save_csv: bool = True,
) -> Tuple[int, str]:
if not os.path.exists(preview_png_path):
raise FileNotFoundError(f"Preview image not found: {preview_png_path}")
img_uint8 = iio.imread(preview_png_path)
if img_uint8.ndim == 3:
# if RGB, convert to grayscale by taking luminance-like mean
img_uint8 = img_uint8.mean(axis=2).astype(np.uint8)
# Keep full-resolution image for overlay drawing
img_full = img_as_float(img_uint8)
# Build detection image (optionally downsampled for speed)
if downsample > 1:
det_img = img_full[::downsample, ::downsample]
scale_factor = float(downsample)
else:
det_img = img_full
scale_factor = 1.0
# 1) Smooth and threshold to remove dark background
sm = gaussian(det_img, sigma=1.0, truncate=2.0)
# Compute threshold
out_dir_dbg = os.path.dirname(preview_png_path)
if debug:
iio.imwrite(
os.path.join(out_dir_dbg, "smooth_debug.png"),
(np.clip(sm, 0, 1) * 255).astype(np.uint8),
)
if threshold_mode == "percentile":
t = np.percentile(sm, np.clip(thresh_percent, 0.0, 100.0))
t = t * float(threshold_scale)
mask = sm > max(t, 0.0)
elif threshold_mode == "sauvola":
# Adaptive local threshold; large window to capture soft edges
window_size = max(15, int(min(sm.shape) * 0.03))
if window_size % 2 == 0:
window_size += 1
sau_t = threshold_sauvola(sm, window_size=window_size)
mask = sm > sau_t
else:
try:
t = threshold_otsu(sm)
except Exception:
t = np.percentile(sm, 90)
t = t * float(threshold_scale)
mask = sm > max(t, 0.0)
if debug:
# Save thresholded map and mask
if threshold_mode != "sauvola":
thr_img = (sm > max(t, 0.0)).astype(np.uint8) * 255
iio.imwrite(os.path.join(out_dir_dbg, "threshold_map_debug.png"), thr_img)
iio.imwrite(
os.path.join(out_dir_dbg, "mask_debug.png"), (mask.astype(np.uint8) * 255)
)
mask = remove_small_objects(mask, min_size=max(1, int(min_area_px)))
mask = remove_small_holes(mask, area_threshold=16)
if closing_radius and closing_radius > 0:
mask = binary_closing(mask, footprint=disk(int(closing_radius)))
# 2) Distance transform and watershed to split touching objects
distance = ndi.distance_transform_edt(mask)
if debug:
dm_vis = (255 * (distance / (distance.max() + 1e-6))).astype(np.uint8)
iio.imwrite(os.path.join(out_dir_dbg, "distance_debug.png"), dm_vis)
# Build seeds per seed_mode
seeds_mask = np.zeros_like(mask, dtype=bool)
if seed_mode in ("distance", "both"):
coords = peak_local_max(
distance,
footprint=np.ones((max(1, int(ws_footprint)), max(1, int(ws_footprint)))),
labels=mask,
)
if coords.size > 0:
seeds_mask[tuple(coords.T)] = True
if seed_mode in ("log", "both"):
# Estimate sigma range from physical diameter if available; otherwise fallback to generic
sigma_min = 1.5
sigma_max = 6.0
if min_diam_um is not None and width_um is not None and height_um is not None:
H_full, W_full = img_full.shape
px_x = width_um / float(W_full)
px_y = height_um / float(H_full)
px_um = np.sqrt(px_x * px_y)
min_rad_px_full = (min_diam_um / px_um) / 2.0
max_rad_px_full = min_rad_px_full * 2.5
# account for downsample
min_rad_px = min_rad_px_full / scale_factor
max_rad_px = max_rad_px_full / scale_factor
sigma_min = float(max(1.0, float(min_rad_px) / np.sqrt(2.0)))
sigma_max = float(max(sigma_min + 0.5, float(max_rad_px) / np.sqrt(2.0)))
blobs = blob_log(
sm,
min_sigma=sigma_min,
max_sigma=sigma_max,
num_sigma=10,
threshold=log_threshold,
)
# Enforce min separation by writing to seeds_mask with strides around each seed
for yx in blobs[:, :2]:
y, x = int(yx[0]), int(yx[1])
y0 = max(0, y - min_sep_px)
y1 = min(seeds_mask.shape[0], y + min_sep_px + 1)
x0 = max(0, x - min_sep_px)
x1 = min(seeds_mask.shape[1], x + min_sep_px + 1)
seeds_mask[y0:y1, x0:x1] = False
if mask[y, x]:
seeds_mask[y, x] = True
markers = ndi.label(seeds_mask & mask)[0]
if debug:
iio.imwrite(
os.path.join(out_dir_dbg, "markers_debug.png"),
(seeds_mask.astype(np.uint8) * 255),
)
# Watershed on negative smoothed intensity to better split touching bright blobs
labels_ws = watershed(-sm, markers, mask=mask)
if debug:
mark_vis = (markers > 0).astype(np.uint8) * 255
iio.imwrite(os.path.join(out_dir_dbg, "markers_debug.png"), mark_vis)
bounds = find_boundaries(labels_ws, mode="outer")
bvis = bounds.astype(np.uint8) * 255
iio.imwrite(os.path.join(out_dir_dbg, "boundaries_debug.png"), bvis)
# 3) Measure regions and filter by circularity and size
detections = []
regions = regionprops(labels_ws)
# Compute pixel size if physical dimensions provided
px_size_y_um = None
px_size_x_um = None
if width_um is not None and height_um is not None:
H_full, W_full = img_full.shape
px_size_x_um = width_um / float(W_full)
px_size_y_um = height_um / float(H_full)
min_radius_px = None
if (
min_diam_um is not None
and px_size_x_um is not None
and px_size_y_um is not None
):
# Use geometric mean pixel size to convert diameter to pixels (full-res)
px_size_um = np.sqrt(px_size_x_um * px_size_y_um)
min_radius_px = (min_diam_um / px_size_um) / 2.0
# Convert threshold into detection-scale pixels if we downsampled
if downsample > 1:
min_radius_px = min_radius_px / float(downsample)
for r in regions:
if r.area < max(1, int(min_area_px)):
continue
perim = r.perimeter if r.perimeter > 0 else 1.0
circ = 4.0 * np.pi * (r.area / (perim * perim))
if circ < circularity_min:
continue
cy, cx = r.centroid
rad = np.sqrt(r.area / np.pi)
# Physical min size filter
if min_radius_px is not None and rad < min_radius_px:
continue
# Physical max size filter (optional)
if (
max_diam_um is not None
and px_size_x_um is not None
and px_size_y_um is not None
):
px_size_um = np.sqrt(px_size_x_um * px_size_y_um)
max_radius_px = (max_diam_um / px_size_um) / 2.0
if downsample > 1:
max_radius_px = max_radius_px / float(downsample)
if rad > max_radius_px:
continue
# Intensity contrast test: mean(center) - mean(ring)
if min_contrast and min_contrast > 0:
r_in = int(max(1, rad * 0.8))
r_out = int(max(r_in + 1, rad * 1.3))
cyi, cxi = int(cy), int(cx)
# Extract a local patch to avoid scanning the full image
pad = int(max(r_out + 1, 8))
y0 = max(0, cyi - pad)
y1 = min(det_img.shape[0], cyi + pad + 1)
x0 = max(0, cxi - pad)
x1 = min(det_img.shape[1], cxi + pad + 1)
patch = det_img[y0:y1, x0:x1]
py, px = np.ogrid[y0:y1, x0:x1]
dist = np.sqrt((py - cyi) ** 2 + (px - cxi) ** 2)
center_mask = dist <= r_in
ring_mask = (dist > r_in) & (dist <= r_out)
if center_mask.any() and ring_mask.any():
contrast = float(patch[center_mask].mean() - patch[ring_mask].mean())
gmin, gmax = float(det_img.min()), float(det_img.max())
denom = max(1e-6, gmax - gmin)
contrast /= denom
if contrast < min_contrast:
continue
detections.append((cy, cx, rad))
count = len(detections)
# 4) Create overlay visualization and draw green circle borders
base = gray2rgb((img_full * 255).astype(np.uint8))
overlay = base.copy()
dets_full_res = []
for y, x, r in detections:
yf, xf, rf = float(y), float(x), float(r)
if downsample > 1:
yf = yf * float(scale_factor)
xf = xf * float(scale_factor)
rf = rf * float(scale_factor)
rr, cc = circle_perimeter(
int(yf), int(xf), max(int(rf), 1), shape=overlay.shape[:2]
)
overlay[rr, cc] = [0, 255, 0]
dets_full_res.append((yf, xf, rf))
# 5) Draw total count at top-right
pil_img = Image.fromarray(overlay)
draw = ImageDraw.Draw(pil_img)
text = str(count)
try:
font = ImageFont.load_default()
except Exception:
font = None
try:
bbox = draw.textbbox((0, 0), text, font=font)
text_w = bbox[2] - bbox[0]
text_h = bbox[3] - bbox[1]
except Exception:
# Fallback dimensions
text_w, text_h = (len(text) * 8, 12)
pad = 10
_, W = overlay.shape[0], overlay.shape[1]
x0 = W - text_w - pad
y0 = pad
draw.rectangle([x0 - 4, y0 - 2, x0 + text_w + 4, y0 + text_h + 2], fill=(0, 0, 0))
draw.text((x0, y0), text, fill=(0, 255, 0), font=font)
overlay = np.array(pil_img)
out_dir = os.path.dirname(preview_png_path)
# Write CSV of detections (full-res coordinates) if requested
if save_csv:
try:
csv_path = os.path.join(out_dir, "detections.csv")
with open(csv_path, "w") as f:
f.write("y,x,r\n")
for yf, xf, rf in dets_full_res:
f.write(f"{yf:.3f},{xf:.3f},{rf:.3f}\n")
except Exception:
pass
out_path = os.path.join(out_dir, "circles_overlay.png")
iio.imwrite(out_path, overlay)
print(f"Circle count: {count}")
print(f"Overlay saved: {out_path}")
return count, out_path
def main(argv: Optional[Sequence[str]] = None) -> int:
args = parse_args(argv)
try:
# Dot counting mode if --count-image is provided
if args.count_image:
_count_dots_on_preview(
preview_png_path=args.count_image,
min_sigma=args.min_sigma,
max_sigma=args.max_sigma,
num_sigma=args.num_sigma,
threshold=args.threshold,
overlap=args.overlap,
downsample=args.downsample,
width_um=args.width_um,
height_um=args.height_um,
min_diam_um=args.min_diam_um,
threshold_mode=args.threshold_mode,
thresh_percent=args.thresh_percent,
threshold_scale=args.threshold_scale,
ws_footprint=args.ws_footprint,
circularity_min=args.circularity_min,
min_area_px=args.min_area_px,
debug=args.debug,
closing_radius=args.closing_radius,
min_contrast=args.min_contrast,
hmax=args.hmax,
max_diam_um=args.max_diam_um,
)
return 0
# Otherwise, require --input for inspection
if not args.input:
raise ValueError(
"Either --input (TIFF) or --count-image (PNG) must be provided."
)
inspect_and_preview(
filepath=args.input,
series_index=args.series,
level_index=args.level,
keep_time_index=args.time,
projection_mode=args.zproject,
preview_max_dim=args.max_dim,
output_dir=args.output_dir,
)
return 0
except Exception as exc:
print(f"Error: {exc}")
return 1
if __name__ == "__main__":
sys.exit(main())
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