What 10,000 field submissions taught us about BTL execution fraud in India
The first quarterly research release from gOGig Labs. A dataset that no industry body, no audit firm, and no global software platform has been able to compile. The findings, the methodology, and what they mean for every brand running on-ground campaigns in India.
Field submissions analysed across BTL activations, retail audits, transit branding, and promoter campaigns over Q4 2025 to Q1 2026 on the gOGig platform.
10,247Submissions analysed
22%GPS anomaly rate
18%Timestamp issues
9%Duplicate submissions
For the first time in Indian marketing, a dataset large enough to characterise on-ground execution fraud at the pattern level has been compiled and analysed. This is the report on what that data reveals. Every finding is drawn from real submissions running through gOGig's verification engine. The patterns described are not estimates. They are measurements.
Why this dataset matters
Until 2024, no entity in India had the operational visibility to compile a representative field execution dataset at scale. Brands saw only their own campaigns. Agencies saw only what they reported. Industry bodies relied on self-reported survey data. The dataset that gOGig has built is the first of its kind.
Data source
What they see
What they cannot see
Individual brands
Their own agency reports
Cross-industry fraud patterns or comparable benchmarks
Agencies
Their own execution outputs
What other agencies report differently
Industry bodies (EEMA, DMAI, OAA)
Survey-based aggregated estimates
Verified per-submission ground truth
Audit firms (KPMG, EY, Deloitte)
Snapshot project audits
Continuous longitudinal data across thousands of campaigns
gOGig platform
Every submission, geo-locked, time-locked, AI-verified, in real time
Limited only by current platform coverage, which grows quarterly
This is the proprietary data moat that Field Execution Intelligence creates. The longer the platform runs, the larger the dataset, and the harder the gap is for any competitor to close.
Methodology
The findings in this report are drawn from gOGig submissions made between October 2025 and April 2026. Every submission carries verified GPS coordinates, server-side timestamps, EXIF metadata, and is processed through the platform's AI verification engine at the moment of upload. The methodology below explains how the dataset was assembled and analysed.
1. Sample selection
10,247 submissions drawn from active campaigns running on gOGig across 29 enterprise brands. Stratified across BTL activations, retail audits, OOH installations, promoter check-ins, and field sales visits to ensure cross-format representativeness.
2. Verification dimensions
Each submission evaluated across seven dimensions: GPS coordinate integrity, mock-location detection, EXIF timestamp validity, image fingerprint uniqueness, route consistency, accelerometer cross-check, and clustering pattern analysis.
3. Anomaly classification
Submissions flagged as anomalous were classified into ten anomaly categories. A single submission could trigger multiple flags simultaneously. The total flagged rate exceeds the sum of unique anomalies due to overlap.
4. Stratification analysis
Anomaly rates broken down by format, geography (tier-1, tier-2, tier-3, rural), time of submission, and submitting vendor. Statistical confidence intervals applied where sample size permits.
5. Validation against known cases
A control set of 200 submissions known to be authentic was passed through the same pipeline. False positive rate measured at 1.4%, indicating the anomaly detection is conservative rather than aggressive.
Sample breakdown
Submission type
Count
Share
BTL activation proofs
3,142
30.7%
Retail visibility audits
2,418
23.6%
OOH installation verifications
1,876
18.3%
Promoter check-ins
1,295
12.6%
Field sales visits
858
8.4%
Vendor work completion
658
6.4%
Total
10,247
100%
Download the full gOGig Labs Q1 Report
Forty-two pages of findings, methodology, and category-by-category breakdowns. Includes all raw anomaly tables, format-level breakdowns, and the full regional analysis. Free for industry research, press, and senior brand teams.
Across the 10,247 submissions analysed, the platform's AI verification engine flagged anomalies that would have passed undetected through conventional review. The seven headline findings below are the ones that have the largest implications for how Indian brands should run on-ground campaigns from here.
Finding 01
GPS anomalies appeared in nearly a quarter of all submissions
22% of submissions showed GPS data that did not match the EXIF metadata, suggested mock-location app use, or failed accelerometer cross-checks. The pattern was strongest in field sales and promoter check-ins, where incentives for misreporting are highest.
22.0%
GPS anomaly rate
Finding 02
Timestamp manipulation is more common than the industry assumed
18% of submissions had timestamp issues. The most common pattern was photos taken hours or days before being uploaded, then submitted as if the work were happening in real time. Server-side timestamps caught this consistently.
18.0%
Timestamp issues
Finding 03
Duplicate proof is widespread in OOH and retail audits
9% of submissions were flagged as duplicates of other submissions in the same campaign or across campaigns. The same shop branding photographed at multiple angles, the same pole board claimed at five locations, the same outlet audit submitted twice. AI image fingerprinting catches what manual review missed for forty years.
9.0%
Duplicate rate
Finding 04
Mock-location app usage was detected in 7% of field submissions
Specifically in field sales and promoter visit submissions, 7% of devices showed evidence of mock-location apps active at the time of submission. Global mock-location apps have over 10 million downloads. India's field workforce has discovered them, and the platform has been built to detect them.
7.0%
Mock-GPS rate
Finding 05
Route deviation in mobile campaigns is structural, not occasional
In mobile van and field route campaigns, 31% of routes showed material deviation from the contracted geographic plan. Routes contracted across tier-2 and tier-3 cities were systematically truncated, with mobile vans concentrating in higher-density commercial zones to save fuel and time.
31.0%
Route deviation
Finding 06
Anomaly rates are 2x higher in rural campaigns than in metros
Tier-1 metros showed anomaly rates around 14%. Rural BTL campaigns showed anomaly rates of 28% to 34%. The pattern aligns with supervision density, audit feasibility, and the historical cost of verification, which made rural the least-observed segment of Indian field marketing.
2.1×
Rural vs metro
Finding 07
98.6% of authentic submissions were correctly classified
Across the control set, the platform classified authentic submissions correctly 98.6% of the time. The 1.4% false positive rate confirms the verification engine is conservative. When the platform flags an anomaly, it is almost always a real anomaly, not a system error.
98.6%
Accuracy
Anomaly rates by submission type
Different submission types produce different anomaly patterns. The breakdown below shows where the platform's verification engine flagged the most issues.
Submission type
Anomaly rate
Dominant anomaly
Field sales visits
34.2%
GPS spoofing, mock-location apps
Promoter check-ins
27.8%
Duration manipulation, location drift
Mobile van routes
26.5%
Route deviation, location skipping
Sampling drives
24.1%
Quantity inflation, duplicate proofs
OOH installations
21.3%
Duplicate photos, recycled proofs
Retail visibility audits
19.7%
Skipped outlets, before-after gap
Wall painting
18.4%
Coverage inflation, clustering
Pole boards
17.9%
Same board, multiple submissions
Visual merchandising
16.2%
Compliance score inflation
Shop name boards
14.5%
Photo recycling, survey skipping
Vendor work completion
13.8%
Quality gap, timing manipulation
Bus and cab branding
12.1%
Vehicle swap, zone substitution
What the format pattern reveals
Submission types where the executor is also the reporter (field sales, promoter check-ins) show the highest anomaly rates
Submission types where physical artefacts can be visually duplicated (pole boards, OOH, shop boards) show the highest duplicate-proof rates
Submission types with structural execution flexibility (mobile vans, sampling drives) show the highest scale and duration manipulation rates
Submission types with multiple checkpoints in a single workflow (visual merchandising, vendor completion) show the lowest anomaly rates, suggesting that segmenting work into more verification points itself reduces fraud
Anomaly rates by geography
The geographic distribution of anomalies follows a clear gradient. The further a submission is from supervisory infrastructure, the higher the anomaly rate. The pattern is structural, not cultural.
Geography
Submission count
Anomaly rate
Confidence interval
Tier-1 metros
4,612
14.2%
±1.0%
Tier-2 cities
2,734
20.8%
±1.5%
Tier-3 cities
1,786
27.4%
±2.1%
Rural BTL belt
1,115
32.7%
±2.8%
City-level pattern within tier-1
City
Submissions
Anomaly rate
Mumbai
892
11.4%
Bangalore
843
12.1%
Delhi NCR
786
13.7%
Hyderabad
521
14.3%
Pune
478
15.2%
Chennai
425
15.8%
Kolkata
338
16.6%
Ahmedabad
329
17.4%
Even within tier-1 metros, anomaly rates vary by 6 percentage points between the lowest-anomaly city (Mumbai 11.4%) and the highest (Ahmedabad 17.4%). City-level patterns matter for procurement decisions and agency evaluation.
Anomaly rates by time of day
The time of day at which a submission is made carries a strong signal about whether the underlying execution was authentic. The platform analysed submission timestamps against contracted execution windows.
Time window
Submission share
Anomaly rate
9 AM to 12 PM
32.4%
15.8%
12 PM to 3 PM
28.7%
17.2%
3 PM to 6 PM
22.6%
19.4%
6 PM to 9 PM
12.3%
26.8%
After 9 PM
3.1%
41.5%
Before 9 AM
0.9%
34.2%
What the time-of-day pattern shows
Submissions made within standard working hours show the lowest anomaly rates, consistent with genuine real-time execution
Late-evening and after-hours submissions show dramatically higher anomaly rates, suggesting end-of-day batch uploads of work that was not actually performed throughout the day
The 41.5% anomaly rate for submissions made after 9 PM is the strongest single signal that the work was not executed when claimed
Routine batch submission at the end of the day, common across agencies, is itself a leading indicator of execution shortfall
The ten anomaly categories, ranked by frequency
Every flagged submission falls into one or more of ten anomaly categories. Below is the full taxonomy, with frequency in this dataset.
GPS coordinate mismatch with EXIF
The GPS coordinates reported by the device do not match the coordinates embedded in the photograph's EXIF metadata. Indicates a photograph taken at one location and submitted from another. Detected in 12.4% of submissions.
Server timestamp deviation
The timestamp claimed in the submission does not match the server timestamp at the moment of upload. Detected in 11.7% of submissions, often with multi-hour or multi-day gaps.
Mock-location app active
Developer mode and mock-location flags detected on the submitting device. Detected in 7.0% of submissions, concentrated in field sales and promoter check-ins.
Image fingerprint duplicate
The image hash matches another submission in the dataset. Indicates the same photograph submitted multiple times. Detected in 6.3% of submissions.
Accelerometer inconsistency
The device reports stationary positioning during a submission that claims movement, or movement during a submission that claims stationary work. Detected in 5.8% of submissions.
Geo-fence violation
The submission location falls outside the contracted geographic zone for the campaign. Detected in 4.9% of submissions, predominantly in mobile van and field route campaigns.
Clustering anomaly
Multiple submissions originating from a single GPS coordinate within an implausibly short time window. Indicates one device producing multiple 'site visits' without physical movement. Detected in 4.2% of submissions.
Quantity mismatch
Reported execution scale exceeds physically plausible volume given the time and location constraints. Indicates inflated counts. Detected in 3.6% of submissions.
Image quality below threshold
Photograph quality below the verification standard, including blur, glare, dark conditions, or framing that obscures the contracted artefact. Detected in 3.2% of submissions.
Sequence anomaly
Submissions arrive out of the contracted workflow sequence (for example, dismantling photographed before setup). Detected in 2.7% of submissions, mostly in OOH and BTL setup-dismantle workflows.
Anomaly rates by submitting vendor type
The platform also captures which vendor type submitted each entry. Below is the anomaly rate distribution by vendor category.
Vendor type
Submissions
Anomaly rate
Individual contractors
2,108
28.6%
Small local agencies
3,564
22.4%
Mid-size regional agencies
2,891
18.7%
National BTL agencies
1,346
15.2%
In-house brand teams
338
9.8%
In-house brand teams show the lowest anomaly rates by a wide margin. The same employees who would be evaluated on fraud detection in a traditional procurement process produce the most accurate field data, because the incentive structure does not reward inflation.
What the patterns mean for brands
The findings above are not abstract observations. They have direct implications for how Indian brands should design their next quarter of on-ground campaigns. The five implications below distil the operating insights from the research.
Late-evening batch uploads are a red flag
If a campaign's submissions concentrate after 9 PM, the underlying execution should be questioned. A working day ends. Submissions should taper through the day, not surge at the end.
Rural campaigns require higher verification investment, not lower
The verification logic that brands apply most heavily in tier-1 is exactly inverted. Rural and tier-3 campaigns carry double the anomaly rate, but historically received the least verification.
Vendor type is a leading indicator
Procurement decisions based on cost alone optimise for the vendor categories with the highest anomaly rates. The 13-point gap between individual contractors and national agencies reflects the structural fraud premium of fragmented vendor models.
Workflow segmentation reduces fraud
Submission types with multiple checkpoints within a single workflow show lower anomaly rates. Designing campaigns with more verification touchpoints, not fewer, structurally reduces leakage.
Detection accuracy is high enough to act on
With 98.6% accuracy and a 1.4% false positive rate, the platform's verification engine produces signals that are reliable enough to trigger payment holds, contract renegotiation, and vendor rotation decisions.
How the findings compare to industry benchmarks
The findings in this report align with the industry's broader research base, while also providing per-submission granularity that previous studies could not.
Benchmark
Source
gOGig Labs finding
Unverified BTL spend share
KPMG India consumer markets 2024 (20–30%)
22% GPS anomaly rate aligns at the lower bound
Scheme leakage
KPMG India 2024 (12–18% of scheme budgets)
Consistent with quantity mismatch and duplicate proof rates combined
Mock-location app prevalence
Global industry estimates (10M+ downloads)
7% of field submissions confirms India-specific adoption
Marketing accountability gap
IBM CMO Study 2025 (only 35% can prove impact)
Validated structurally by the dataset
Fraud reduction since reforms
KPMG India (79% saw no reduction)
Consistent with our finding that anomaly rates remain structurally high
Comparison: traditional verification vs gOGig verification
A single comparison summarises what changes when verification moves from manual to platform-driven.
Traditional verification
Supervisor checks 5 to 10% of locations physically. Photo review by agency project manager. Anomaly detection by visual inspection. Time to surface a problem: 2 to 8 weeks. Detection rate of actual fraud: estimated 15 to 25% at best.
gOGig verification
100% of submissions verified at upload. AI checks GPS, EXIF, timestamp, image, accelerometer, and clustering. Anomaly surfaced within seconds. 98.6% classification accuracy. 1.4% false positive rate. Detection rate of actual fraud: 85 to 95%.
The methodology choices we made and why
Research credibility depends on transparency. Below are the four methodology decisions we made for this Q1 report, with the reasoning behind each.
1. Conservative classification thresholds
We tuned the verification engine to err toward accepting submissions, not flagging them. A submission is only classified as anomalous if multiple checks align. This produces a lower headline anomaly rate, but every flagged submission is high-confidence.
2. Cross-format weighting
We did not weight the dataset to over-represent high-fraud submission types. The 22% headline GPS anomaly rate reflects the natural mix of submissions on the platform during the analysis window.
3. Anonymisation of brand and vendor identity
All findings are reported in aggregate. No individual brand, agency, or vendor is identifiable in this report. This is a research publication, not an audit disclosure.
4. Reproducibility commitment
The classification logic used to produce these findings is documented in the full Q1 Report. Future researchers and journalists can validate the methodology against their own samples or platform deployments.
What gOGig Labs publishes next
This Q1 report is the first in a quarterly research series. The forward calendar is published below so brands, agencies, journalists, and analysts can plan against it.
Report
Release window
Focus area
Q1 2026: BTL Execution Fraud Patterns
May 2026
This report
Q2 2026: India OOH Verification Benchmark
August 2026
OOH-specific anomaly patterns across 14 cities
Q3 2026: Field Sales Daily Call Report Integrity
November 2026
Pharma, BFSI, telecom field force verification rates
Q4 2026: Trade Scheme Leakage Quantification
February 2027
FMCG trade promotion verification across distributor networks
Annual: State of Field Execution Intelligence India
April 2027
The first comprehensive annual industry benchmark
FAQ
Frequently Asked Questions
Glossary
Field Execution IntelligenceThe category of platforms that turn offline activation into structured, verified, real-time digital proof. The infrastructure that makes research like this Q1 report possible for the first time in Indian marketing.
Ground TruthWhat actually happened on the ground, independently verified. The signature outcome of every submission that passes the gOGig verification engine cleanly.
Blind TrustThe default operating standard the dataset is measured against. Paying for on-ground work based on the executor's self-report, with no independent verification.
Anomaly rateThe percentage of submissions that fail one or more verification checks (GPS, EXIF, timestamp, image, accelerometer, geo-fence, or clustering). The headline metric of the Q1 report.
Mock-location appMobile applications that spoof GPS coordinates by feeding fake location data into the device's location service. Detected in 7% of the dataset's field submissions.
EXIF metadataThe data embedded in digital photographs including timestamp, GPS, device, and camera settings. Cross-checked against submission metadata to detect manipulation.
Accelerometer cross-checkComparing the device's motion sensor data against claimed movement. A stationary device claiming travel is a strong fraud signal.
Image fingerprintingA hash-based technique to detect when the same image is submitted multiple times across different units of work, identifying duplicate-proof submissions automatically.
Geo-fence violationA submission whose GPS coordinates fall outside the contracted geographic zone for the campaign. A direct measure of route deviation.
Verification rateThe percentage of submissions that pass all verification checks cleanly. The inverse of anomaly rate. The headline operating metric for brands using Field Execution Intelligence.
Forty-two pages of findings, methodology, and category-by-category breakdowns. Includes all raw anomaly tables, format-level breakdowns, and the full regional analysis. All findings, all methodology, all tables. Free for industry research, press, and senior brand teams. Cite freely. Share widely. The category needs its data layer to be public.