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# Tangled Closed-Loop Counting
## Goal
Render a tangle of smooth **closed loops** on a single canvas. Every
loop is drawn in the **same** dark colour, so the model cannot recover
the count by colour-segmenting the image. Loops cross each other and
themselves freely, but never run parallel for long stretches — every
loop remains individually traceable.
This is a *distributed scanning* task: there is no single starting
point. The model must look across the whole image, follow each loop
all the way around, and report how many distinct closed loops exist.
## Differs from `sequential_traversal/tube_connection`
`tube_connection` labels endpoints and asks "which top label connects
to which bottom label", which is solved by tracing one path at a time.
Here there are no labels, no endpoints at all, and no per-loop tracing
question. The model needs the global *count* of distinct closed loops.
## Differs from `sequential_traversal/line_intersections`
`line_intersections` uses perimeter-anchored open curves and asks for
crossing sequences along one labelled string. Here every curve is a
closed loop (no endpoints anywhere), every loop is anonymous, all in
the same colour, and the only ground truth is the number of loops.
## Question
> How many distinct closed loops are tangled together in this image?
> Each loop is a single continuous curve that closes back on itself —
> there are no loose endpoints anywhere. All loops are drawn in the
> same colour and may cross other loops or themselves freely. Count
> the total number of distinct closed loops and report the count as a
> positive integer.
## Generation Procedure
1. **Sample N** in `[min_loops, max_loops]` (default 5–11).
2. **For each loop**, build a smooth closed curve:
- Pick a random interior centre so the loop fits inside
`interior_margin` (default 55 px) of the canvas edge.
- Sample 6–10 waypoints on a jittered ring around that centre
(angle jitter ≈ 0.42 rad, radius jitter ≈ 32 % of the mean
radius, mean radius sampled from 150–275 px).
- Fit a periodic cubic B-spline through the waypoints
(`scipy.interpolate.splprep(..., per=True, k=3)`) and
dense-sample 900 points along it. The last point is snapped to
equal the first so the renderer draws a genuine closed curve.
3. **Find all crossings** (self and pair) — used only by the
close-approach validator below.
4. **Reject** the sample if any two curves come within ~9 px of each
other anywhere except at a real crossing point. For self-closeness
the segment-index gap is computed **circularly** (with wraparound),
since closed curves have no linear endpoint ordering.
5. **Render** all loops in the same dark colour onto an off-white
canvas with subtle background noise.
## Anti-Shortcut Notes
The task has been through two shortcut-plugging rewrites:
1. **Unique-colour shortcut → single stroke colour.** An earlier
version assigned each string a unique colour, collapsing the task
to "count distinct colours". Fixed by drawing every curve in the
same dark colour.
2. **Skeleton-endpoint shortcut → closed loops.** The previous
perimeter-anchored design had each string as an *open* curve with
two endpoints on the border. A ten-line attack recovered the
answer on 28 / 30 samples: `skeletonize(gray < 110)`
count pixels with exactly one 8-neighbour → divide by two.
Crossings are X/T junctions (degree ≥ 3), so only the two terminal
endpoints of each string have degree 1, and endpoints ÷ 2 is the
string count. Moving to closed curves eliminates the attack
entirely — a closed loop's skeleton has no degree-1 pixels, so the
attack returns 0 regardless of loop count. Verified on the
regenerated dataset.
3. **No-near-parallel validation** (retained) prevents two loops that
run parallel for a long stretch from reading as one fat loop,
which would also confuse a human counter.
## Annotation Format
```json
{
"image": "images/tangled_loops_00000.png",
"width": 1024,
"height": 1024,
"num_loops": 7,
"question": "How many distinct closed loops are tangled together ...",
"answer": 7
}
```
## Output Organization
```text
tangled_loops/
creation.py
creation.md
annotations.jsonl
data.json
images/
tangled_loops_00000.png
...
```