cupido/data/processed/README.md
Giorgio Gilestro f176224150 Move metadata xlsx/TSV to /mnt/data/projects/cupido/
Consolidates everything bulky (tracking DBs, targets, metadata
spreadsheet) under a single DATA_VOLUME root outside the ownCloud-synced
repo. Notebooks now use a visible DATA_DIR = Path(...) idiom rather than
walking up the filesystem with PROJECT_ROOT.parent — easier for students
with no Python background to follow.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-05-01 08:47:15 +01:00

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# Processed Data
CSVs derived from the tracking DBs (`/mnt/data/projects/cupido/tracked/`)
and the merged TSV (`/mnt/data/projects/cupido/all_video_info_merged.tsv`).
All files are gitignored and regenerable.
## Files and Regeneration
| File | Description | Generated By |
|------|-------------|--------------|
| `distances.csv` | Per-frame inter-fly distances for every (date, machine, ROI, session). Includes metadata columns to filter trained vs naïve, training phase, species, etc. | `scripts/calculate_distances.py` |
| `*_distances_aligned.csv` | (legacy, 2025-07-15 only) distances aligned to barrier opening | `notebooks/flies_analysis*.ipynb` |
| `*_tracked.csv` | (legacy) identity-tracked fly positions | `notebooks/flies_analysis_simple.ipynb` |
| `*_max_velocity.csv` | (legacy) max velocity over 10 s windows | `notebooks/flies_analysis_simple.ipynb` |
## Loading the data
```python
import sys
sys.path.insert(0, "../scripts")
from load_roi_data import load_roi_data
data = load_roi_data() # full batch as one DataFrame
# Or filter the metadata first:
import pandas as pd
tsv = pd.read_csv("/mnt/data/projects/cupido/all_video_info_merged.tsv", sep="\t")
data = load_roi_data(tsv[tsv.species.str.contains("Melanogaster")])
```
The returned DataFrame has columns:
`id, t, x, y, w, h, phi, is_inferred, has_interacted, session, ROI, date,
machine_name, species, male, training_date_time, testing_date_time,
training_length_hr, consolidation_length_hr, memory, age`.
`session` is `"training"` or `"testing"`; `male` is `"trained"` or
`"naive"` (canonical — variants like `"naïve"` and `"niave"` are normalized
at the TSV-export step).
## Column Reference (`distances.csv`)
- `date`, `machine_name`, `ROI`, `session`: identifies one fly trajectory
- `t`: time in ms within that session
- `distance`: Euclidean distance between the two flies in pixels
- `n_flies`: number of fly detections at this frame (1 or 2)
- `area_fly1`, `area_fly2`: bounding-box areas (`w * h`) in pixels²
- `male`: `trained` or `naive` (carried from the xlsx; normalized)
- `species`, `memory`, `age`: experimental metadata