home / opsnap

reports

Each row is one public submission to Operation Snap. Includes the offence, vehicle details, location, and outcome.

Disposal outcomes: Education (driver awareness course), Warning Letter, Fixed Penalty (fine), Court (prosecution), NFA (no further action).

Data license: ODbL · Data source: West Midlands Police

id
{'label': 'ID'}
source_file
{'label': 'Source PDF'}
source_page
{'label': 'Page'}
source_row
{'label': 'Row'}
month
{'label': 'Month'}
reporter_transport_mode
{'label': 'Reporter'}
vehicle_make
{'label': 'Make'}
vehicle_model
{'label': 'Model'}
vehicle_colour
{'label': 'Colour'}
offence
{'label': 'Offence'}
second_offence
{'label': 'Second offence'}
offence_location_raw
{'label': 'Location (raw)'}
offence_location
{'label': 'Location'}
council_area_raw
{'label': 'Council (raw)'}
council_area
{'label': 'Council area'}
disposal
{'label': 'Outcome'}
nfa_rationale
{'label': 'NFA reason'}
witness_contacted
{'label': 'Witness contacted'}
latitude
{'label': 'Lat'}
longitude
{'label': 'Lng'}

15 rows where month = "2025-06", offence = "Contravening a Red Traffic Light" and reporter_transport_mode = "Pedestrian" sorted by month descending

✎ View and edit SQL

This data as json, CSV (advanced)

Suggested facets: vehicle_colour, offence_location_raw, offence_location, council_area_raw, nfa_rationale, latitude, longitude

vehicle_make 9

  • Toyota 4
  • Ford 3
  • Renault 2
  • BMW 1
  • Hyundai 1
  • Mercedes-Benz 1
  • Nissan 1
  • Peugeot 1
  • Tesla 1

disposal 4

  • Education 9
  • NFA 4
  • Fixed Penalty 1
  • Warning Letter 1

council_area 4

  • Walsall 9
  • Birmingham 4
  • Halesowen 1
  • Sutton Coldfield 1

reporter_transport_mode 1

  • Pedestrian · 15 ✖

offence 1

  • Contravening a Red Traffic Light · 15 ✖

month 1

  • 2025-06 · 15 ✖
id source_file source_page source_row month ▲ reporter_transport_mode vehicle_make vehicle_model vehicle_colour offence second_offence offence_location_raw offence_location council_area_raw council_area disposal nfa_rationale witness_contacted latitude longitude
14080 op-snap---monthly-publication-june-2025.pdf   9 2025-06 Pedestrian Ford Transit Silver Contravening a Red Traffic Light None Broadway North Broadway North Walsall Walsall Education N/A   52.5886007 -1.9741222
14081 op-snap---monthly-publication-june-2025.pdf   10 2025-06 Pedestrian Nissan micra Grey Contravening a Red Traffic Light None Broadway North Broadway North Walsall Walsall Education N/A   52.5886007 -1.9741222
14082 op-snap---monthly-publication-june-2025.pdf   11 2025-06 Pedestrian Toyota Prius White Contravening a Red Traffic Light None Broadway North Broadway North Walsall Walsall Education N/A   52.5886007 -1.9741222
14136 op-snap---monthly-publication-june-2025.pdf   65 2025-06 Pedestrian Tesla Model Y Blue Contravening a Red Traffic Light None Portland Road Portland Road Birmingham Birmingham Education N/A   52.4737014 -1.9412436
14255 op-snap---monthly-publication-june-2025.pdf   184 2025-06 Pedestrian Hyundai I10 Red Contravening a Red Traffic Light None Coombs Road Coombs Road Halesowen Halesowen Fixed Penalty N/A   52.4596073 -2.0500011
14360 op-snap---monthly-publication-june-2025.pdf   289 2025-06 Pedestrian Ford Fiesta Black Contravening a Red Traffic Light None Friary Road Friary Road Birmingham Birmingham NFA No Independent Evidence Available   52.5162814 -1.9395798
14541 op-snap---monthly-publication-june-2025.pdf   470 2025-06 Pedestrian Ford Kuga Blue Contravening a Red Traffic Light None Daw End Lane Daw End Lane Walsall Walsall Education N/A   52.6068849 -1.9611652
14542 op-snap---monthly-publication-june-2025.pdf   471 2025-06 Pedestrian BMW 320D.. Black Contravening a Red Traffic Light None Daw End Lane Daw End Lane Walsall Walsall Education N/A   52.6068849 -1.9611652
14543 op-snap---monthly-publication-june-2025.pdf   472 2025-06 Pedestrian Renault Clio Silver Contravening a Red Traffic Light None Daw End Lane Daw End Lane Walsall Walsall Warning Letter N/A   52.6068849 -1.9611652
14547 op-snap---monthly-publication-june-2025.pdf   476 2025-06 Pedestrian Renault Trafic Beige Contravening a Red Traffic Light None Daw End Lane Daw End Lane Walsall Walsall Education N/A   52.6068849 -1.9611652
14548 op-snap---monthly-publication-june-2025.pdf   477 2025-06 Pedestrian Mercedes-Benz A200 White Contravening a Red Traffic Light None Daw End Lane Daw End Lane Walsall Walsall Education N/A   52.6068849 -1.9611652
14549 op-snap---monthly-publication-june-2025.pdf   478 2025-06 Pedestrian Toyota Auris White Contravening a Red Traffic Light None Daw End Lane Daw End Lane Walsall Walsall Education N/A   52.6068849 -1.9611652
15075 op-snap---monthly-publication-june-2025.pdf   1004 2025-06 Pedestrian Toyota PRIUS GREY Contravening a Red Traffic Light None PERCY ROAD Percy Road Birmingham Birmingham NFA No Independent Evidence Available   52.4506155 -1.8585325
15150 op-snap---monthly-publication-june-2025.pdf   1079 2025-06 Pedestrian Toyota Previa White Contravening a Red Traffic Light None Tyburn Road Tyburn Road Birmingham Birmingham NFA No VRM   52.5113867 -1.8337258
15492 op-snap---monthly-publication-june-2025.pdf   1421 2025-06 Pedestrian Peugeot 208 White Contravening a Red Traffic Light None Chester Road North Chester Road North Sutton Coldfield Sutton Coldfield NFA No Independent Evidence Available   52.548449 -1.8594603

Advanced export

JSON shape: default, array, newline-delimited, object

CSV options:

CREATE TABLE reports (
            id INTEGER PRIMARY KEY AUTOINCREMENT,
            source_file TEXT NOT NULL,
            source_page INTEGER,
            source_row INTEGER,
            month TEXT NOT NULL,
            reporter_transport_mode TEXT,
            vehicle_make TEXT,
            vehicle_model TEXT,
            vehicle_colour TEXT,
            offence TEXT,
            second_offence TEXT,
            offence_location_raw TEXT,
            offence_location TEXT,
            council_area_raw TEXT,
            council_area TEXT,
            disposal TEXT,
            nfa_rationale TEXT,
            witness_contacted TEXT
        , latitude REAL, longitude REAL);
CREATE INDEX idx_month ON reports(month);
CREATE INDEX idx_council_area ON reports(council_area);
CREATE INDEX idx_offence ON reports(offence);
CREATE INDEX idx_disposal ON reports(disposal);
CREATE INDEX idx_location ON reports(offence_location);