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Initial release v0.4.0 — ActiveVision benchmark (85 instances, 17 tasks)
f69e256 verified
from __future__ import annotations
import argparse
import json
import math
import random
from pathlib import Path
from typing import Dict, List, Tuple
import matplotlib
matplotlib.use("Agg")
import matplotlib.pyplot as plt
import numpy as np
Cell = Tuple[int, int]
# ---------------------------------------------------------------------------
# Geometry helpers
# ---------------------------------------------------------------------------
def _cross(ox: float, oy: float, px: float, py: float, qx: float, qy: float) -> float:
return (px - ox) * (qy - oy) - (py - oy) * (qx - ox)
def segments_intersect_properly(
ax: float, ay: float, bx: float, by: float,
cx: float, cy: float, dx: float, dy: float,
) -> bool:
"""True if segment AB *properly* crosses segment CD (shared endpoints don't count)."""
d1 = _cross(cx, cy, dx, dy, ax, ay)
d2 = _cross(cx, cy, dx, dy, bx, by)
d3 = _cross(ax, ay, bx, by, cx, cy)
d4 = _cross(ax, ay, bx, by, dx, dy)
if ((d1 > 0 and d2 < 0) or (d1 < 0 and d2 > 0)) and \
((d3 > 0 and d4 < 0) or (d3 < 0 and d4 > 0)):
return True
return False
def point_seg_dist(px: float, py: float, ax: float, ay: float, bx: float, by: float) -> float:
dx = bx - ax
dy = by - ay
len_sq = dx * dx + dy * dy
if len_sq < 1e-12:
return math.hypot(px - ax, py - ay)
t = max(0.0, min(1.0, ((px - ax) * dx + (py - ay) * dy) / len_sq))
return math.hypot(px - (ax + t * dx), py - (ay + t * dy))
# ---------------------------------------------------------------------------
# Union-Find
# ---------------------------------------------------------------------------
class UnionFind:
def __init__(self, n: int) -> None:
self.parent = list(range(n))
self.rank = [0] * n
self.num_sets = n
def find(self, x: int) -> int:
while self.parent[x] != x:
self.parent[x] = self.parent[self.parent[x]]
x = self.parent[x]
return x
def union(self, a: int, b: int) -> bool:
ra, rb = self.find(a), self.find(b)
if ra == rb:
return False
if self.rank[ra] < self.rank[rb]:
ra, rb = rb, ra
self.parent[rb] = ra
if self.rank[ra] == self.rank[rb]:
self.rank[ra] += 1
self.num_sets -= 1
return True
# ---------------------------------------------------------------------------
# Graph construction — planar, no-dot-crossing edge set
# ---------------------------------------------------------------------------
def place_dots(
rng: random.Random,
grid_rows: int,
grid_cols: int,
num_dots: int,
min_gap: float,
border_margin: int = 5,
max_attempts: int = 8000,
) -> List[Cell]:
cells: List[Cell] = []
lo_r, hi_r = border_margin, grid_rows - border_margin
lo_c, hi_c = border_margin, grid_cols - border_margin
for _ in range(max_attempts):
if len(cells) == num_dots:
break
r = rng.randint(lo_r, hi_r - 1)
c = rng.randint(lo_c, hi_c - 1)
if all(math.hypot(r - er, c - ec) >= min_gap for er, ec in cells):
cells.append((r, c))
return cells
def build_planar_edge_set(
dots: List[Cell],
dot_radius: float,
max_edge_len: float,
) -> List[Tuple[int, int, float]]:
n = len(dots)
candidates: List[Tuple[float, int, int]] = []
for i in range(n):
ri, ci = dots[i]
for j in range(i + 1, n):
rj, cj = dots[j]
d = math.hypot(ri - rj, ci - cj)
if d > max_edge_len:
continue
clear = True
for k in range(n):
if k == i or k == j:
continue
if point_seg_dist(dots[k][0], dots[k][1], ri, ci, rj, cj) < dot_radius + 0.8:
clear = False
break
if clear:
candidates.append((d, i, j))
candidates.sort()
accepted: List[Tuple[int, int, float]] = []
seg_coords: List[Tuple[float, float, float, float]] = []
for dist, i, j in candidates:
ri, ci = dots[i]
rj, cj = dots[j]
crosses = False
for ax, ay, bx, by in seg_coords:
if (ri == ax and ci == ay) or (ri == bx and ci == by) or \
(rj == ax and cj == ay) or (rj == bx and cj == by):
continue
if segments_intersect_properly(ri, ci, rj, cj, ax, ay, bx, by):
crosses = True
break
if not crosses:
accepted.append((i, j, dist))
seg_coords.append((float(ri), float(ci), float(rj), float(cj)))
return accepted
# ---------------------------------------------------------------------------
# Graph construction for bounded faces
# ---------------------------------------------------------------------------
def build_graph_with_faces(
rng: random.Random,
n: int,
planar_edges: List[Tuple[int, int, float]],
target_faces: int,
) -> Tuple[List[Tuple[int, int]], int, int] | None:
"""Build a planar graph targeting a specific number of bounded faces.
Strategy:
1. Build a spanning forest from shuffled edges (connecting as many dots
as possible into one component).
2. Each additional intra-component edge beyond the spanning forest creates
exactly one new bounded face (Euler: F_bounded = E - V + C).
3. Add extra edges until we reach the target face count.
Returns (edges, bounded_faces, num_components) or None if infeasible.
"""
uf = UnionFind(n)
# Shuffle edges, biased toward shorter ones
mid = len(planar_edges) // 2
short = list(planar_edges[:mid])
long = list(planar_edges[mid:])
rng.shuffle(short)
rng.shuffle(long)
shuffled = short + long
# Phase 1: build spanning forest (connect everything into one component ideally)
tree_edges: List[Tuple[int, int]] = []
extra_edges: List[Tuple[int, int]] = []
for i, j, d in shuffled:
if uf.find(i) != uf.find(j):
uf.union(i, j)
tree_edges.append((i, j))
else:
extra_edges.append((i, j))
num_components = uf.num_sets
# Phase 2: add extra edges to create faces
# bounded_faces = E - V + C = (tree + extra) - V + C
# spanning forest has V - C edges, so faces = num_extra_added
rng.shuffle(extra_edges)
if len(extra_edges) < target_faces:
return None
selected_edges = tree_edges + extra_edges[:target_faces]
bounded_faces = target_faces
return selected_edges, bounded_faces, num_components
# ---------------------------------------------------------------------------
# Instance sampling
# ---------------------------------------------------------------------------
QUESTION = (
"How many distinct enclosed regions (bounded faces) are visible in this image? "
"An enclosed region is a maximal area that is fully surrounded by the drawn "
"line segments on every side, with no opening to the outside background. The "
"unbounded outside area does not count as an enclosed region. Each enclosed "
"region should be counted exactly once, regardless of its shape. Count every "
"enclosed region in the entire image and report the total as a positive integer. "
"Provide your final answer enclosed in <answer>...</answer> tags."
)
def sample_instance(
rng: random.Random,
width: int,
height: int,
grid_rows: int,
grid_cols: int,
min_faces: int,
max_faces: int,
num_dots_min: int,
num_dots_max: int,
min_gap: float,
dot_radius: float,
max_edge_len: float,
) -> Dict[str, object] | None:
target_faces = rng.randint(min_faces, max_faces)
num_dots = rng.randint(num_dots_min, num_dots_max)
dots = place_dots(rng, grid_rows, grid_cols, num_dots, min_gap)
if len(dots) < 10:
return None
planar_edges = build_planar_edge_set(dots, dot_radius, max_edge_len)
result = build_graph_with_faces(rng, len(dots), planar_edges, target_faces)
if result is None:
return None
edges, bounded_faces, num_components = result
if bounded_faces < min_faces:
return None
margin = int(min(width, height) * 0.10)
square_size = min(width, height) - 2 * margin
square_left = (width - square_size) / 2.0
square_top = (height - square_size) / 2.0
return {
"width": width,
"height": height,
"grid_rows": grid_rows,
"grid_cols": grid_cols,
"square_left": round(square_left, 2),
"square_top": round(square_top, 2),
"square_size": round(square_size, 2),
"num_dots": len(dots),
"num_edges": len(edges),
"num_components": num_components,
"question": QUESTION,
"answer": bounded_faces,
"dots": [[r, c] for r, c in dots],
"edges": [[i, j] for i, j in edges],
"dot_radius": dot_radius,
}
# ---------------------------------------------------------------------------
# Rendering (matplotlib — smooth anti-aliased output)
# ---------------------------------------------------------------------------
LINE_COLOR = "#2f2f2f"
DOT_COLOR = "#1d1916"
def render_instance(out_path: Path, record: Dict[str, object], noise_seed: int = 0) -> None:
width = int(record["width"])
height = int(record["height"])
grid_rows = int(record["grid_rows"])
grid_cols = int(record["grid_cols"])
square_left = float(record["square_left"])
square_top = float(record["square_top"])
square_size = float(record["square_size"])
dots: List[List[int]] = record["dots"] # type: ignore[assignment]
edges: List[List[int]] = record["edges"] # type: ignore[assignment]
dot_radius_grid = float(record["dot_radius"])
cell_w = square_size / grid_cols
cell_h = square_size / grid_rows
def to_pixel(r: float, c: float) -> Tuple[float, float]:
px = square_left + (c + 0.5) * cell_w
py = square_top + (r + 0.5) * cell_h
return px, py
pixel_dot_radius = dot_radius_grid * min(cell_w, cell_h) * 0.5
edge_thickness = max(1.5, pixel_dot_radius * 0.3)
fig = plt.figure(figsize=(width / 100, height / 100), dpi=100)
ax = fig.add_axes([0, 0, 1, 1])
ax.set_xlim(0, width)
ax.set_ylim(height, 0)
ax.axis("off")
ax.set_facecolor("#f8f6f0")
# Subtle noise background
nrng = np.random.default_rng(noise_seed)
noise = nrng.normal(0.0, 1.0, size=(height, width))
noise = (noise - noise.min()) / max(noise.max() - noise.min(), 1e-6)
ax.imshow(noise, cmap="Greys", alpha=0.05, extent=(0, width, height, 0),
interpolation="bilinear")
# White square background
ax.fill_between(
[square_left, square_left + square_size],
[square_top, square_top],
[square_top + square_size, square_top + square_size],
color="#fffdf8", zorder=0.5,
)
# Border
bx = [square_left, square_left + square_size, square_left + square_size, square_left, square_left]
by = [square_top, square_top, square_top + square_size, square_top + square_size, square_top]
ax.plot(bx, by, color="#2d2720", linewidth=2.0, solid_capstyle="round", zorder=1.0)
# Plain (v4_plain): solid edges. No dashed-line anti-shortcut.
for i, j in edges:
px1, py1 = to_pixel(dots[i][0], dots[i][1])
px2, py2 = to_pixel(dots[j][0], dots[j][1])
ax.plot([px1, px2], [py1, py2],
color=LINE_COLOR, linewidth=edge_thickness,
solid_capstyle="round", alpha=0.92, zorder=2.0)
# Dots on top
for r, c in dots:
px, py = to_pixel(r, c)
circle = plt.Circle((px, py), pixel_dot_radius, color=DOT_COLOR, zorder=3.0)
ax.add_patch(circle)
fig.savefig(out_path, dpi=100, bbox_inches="tight", pad_inches=0)
plt.close(fig)
# ---------------------------------------------------------------------------
# Dataset generation
# ---------------------------------------------------------------------------
def main() -> None:
parser = argparse.ArgumentParser()
parser.add_argument("--output-root", type=Path, required=True)
parser.add_argument("--count", type=int, default=30)
parser.add_argument("--seed", type=int, default=42)
parser.add_argument("--width", type=int, default=1024)
parser.add_argument("--height", type=int, default=1024)
parser.add_argument("--grid-rows", type=int, default=100)
parser.add_argument("--grid-cols", type=int, default=100)
parser.add_argument("--min-faces", type=int, default=4)
parser.add_argument("--max-faces", type=int, default=15)
parser.add_argument("--num-dots-min", type=int, default=60)
parser.add_argument("--num-dots-max", type=int, default=120)
parser.add_argument("--min-gap", type=float, default=5.0)
parser.add_argument("--dot-radius", type=float, default=1.5)
parser.add_argument("--max-edge-len", type=float, default=25.0)
parser.add_argument("--difficulty", type=int, default=5,
help="Integer difficulty >=0; scales faces and dot count.")
args = parser.parse_args()
d = max(0, int(args.difficulty))
# Difficulty scaling per spec
args.min_faces = 5
args.max_faces = 5 + 2 * d
args.num_dots_min = 10 * d
args.num_dots_max = 20 + 10 * d
base_max_edge_len = args.max_edge_len
args.max_edge_len = base_max_edge_len / (1.0 + 0.08 * d)
# Canvas scaling based on num_dots_max growth
N_d = 20 + 10 * d
N_0 = 20
s = math.sqrt(max(1.0, N_d / N_0))
args.width = int(round(args.width * s))
args.height = int(round(args.height * s))
out_root: Path = args.output_root
img_dir = out_root / "images"
img_dir.mkdir(parents=True, exist_ok=True)
ann_path = out_root / "annotations.jsonl"
rng = random.Random(args.seed)
records = []
# Force evenly-spaced answers across [min_faces, max_faces].
if args.count > 1:
forced_targets = [
int(round(args.min_faces + i * (args.max_faces - args.min_faces) / (args.count - 1)))
for i in range(args.count)
]
else:
forced_targets = [args.min_faces]
print(f"forced face counts: {forced_targets}")
with ann_path.open("w") as f:
for i in range(args.count):
sub_seed = rng.randint(0, 2**31 - 1)
tgt = forced_targets[i]
for _ in range(2000):
record = sample_instance(
rng=rng,
width=args.width,
height=args.height,
grid_rows=args.grid_rows,
grid_cols=args.grid_cols,
min_faces=tgt,
max_faces=tgt,
num_dots_min=args.num_dots_min,
num_dots_max=args.num_dots_max,
min_gap=args.min_gap,
dot_radius=args.dot_radius,
max_edge_len=args.max_edge_len,
)
if record is not None and record.get("answer") == tgt:
break
else:
print(f" [{i+1}/{args.count}] SKIP (failed to generate)")
continue
name = f"bounded_faces_counting_{i:05d}.png"
render_instance(img_dir / name, record, noise_seed=sub_seed)
print(f" [{i+1}/{args.count}] faces={record['answer']} dots={record['num_dots']} edges={record['num_edges']}")
rec = {
"image": f"images/{name}",
"question": QUESTION,
"answer": record["answer"],
"metadata": {
"bounded_faces": record["answer"],
"num_dots": record["num_dots"],
"num_edges": record["num_edges"],
"num_components": record["num_components"],
"seed": sub_seed,
},
}
f.write(json.dumps(rec) + "\n")
records.append(rec)
data_json = {
"task": "bounded_faces_counting",
"category": "distributed_scanning",
"count": len(records),
"items": records,
}
(out_root / "data.json").write_text(json.dumps(data_json, indent=2))
print(f"Saved to {out_root}")
if __name__ == "__main__":
main()