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4 months ago

TallyQA: Answering Complex Counting Questions

Manoj Acharya; Kushal Kafle; Christopher Kanan

TallyQA: Answering Complex Counting Questions

Abstract

Most counting questions in visual question answering (VQA) datasets are simple and require no more than object detection. Here, we study algorithms for complex counting questions that involve relationships between objects, attribute identification, reasoning, and more. To do this, we created TallyQA, the world's largest dataset for open-ended counting. We propose a new algorithm for counting that uses relation networks with region proposals. Our method lets relation networks be efficiently used with high-resolution imagery. It yields state-of-the-art results compared to baseline and recent systems on both TallyQA and the HowMany-QA benchmark.

Code Repositories

manoja328/tallyqacode
Official
pytorch

Benchmarks

BenchmarkMethodologyMetrics
object-counting-on-howmany-qaRCN
Accuracy: 60.3
RMSE: 2.35
object-counting-on-tallyqa-complexRCN
Accuracy: 56.2
RMSE: 1.43
object-counting-on-tallyqa-simpleRCN
Accuracy: 71.8
RMSE: 1.13

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TallyQA: Answering Complex Counting Questions | Papers | HyperAI