Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

ChartLens: Fine-grained Visual Attribution in Charts

About

The growing capabilities of multimodal large language models (MLLMs) have advanced tasks like chart understanding. However, these models often suffer from hallucinations, where generated text sequences conflict with the provided visual data. To address this, we introduce Post-Hoc Visual Attribution for Charts, which identifies fine-grained chart elements that validate a given chart-associated response. We propose ChartLens, a novel chart attribution algorithm that uses segmentation-based techniques to identify chart objects and employs set-of-marks prompting with MLLMs for fine-grained visual attribution. Additionally, we present ChartVA-Eval, a benchmark with synthetic and real-world charts from diverse domains like finance, policy, and economics, featuring fine-grained attribution annotations. Our evaluations show that ChartLens improves fine-grained attributions by 26-66%.

Manan Suri, Puneet Mathur, Nedim Lipka, Franck Dernoncourt, Ryan A. Rossi, Dinesh Manocha• 2025

Related benchmarks

TaskDatasetResultRank
Referring Expression GroundingChartLens-ChartQA real-world charts
HBar Precision78.79
9
Visual AttributionChartVA - AITQA Bar Charts
Precision79.86
8
Visual AttributionChartQA ChartVA-Eval, Pie Charts
Precision53.33
4
Visual AttributionChartVA-Eval PlotQA line charts
Detection Rate51.84
4
Visual AttributionChartVA - PlotQA Bar Charts
Precision35.38
4
Visual AttributionChartVA-Eval ChartQA line charts
Detection Rate0.778
4
Visual AttributionChartVA-Eval AITQA line charts
Detection Rate0.5914
4
Showing 7 of 7 rows

Other info

Follow for update