PolyBench: A Benchmark for Compositional Reasoning in Polyphonic Audio
Abstract
PolyBench is introduced as a benchmark to evaluate compositional reasoning in polyphonic audio, revealing performance limitations of current large audio language models in handling multiple concurrent sound events.
Large Audio Language Models (LALMs) are increasingly capable of reasoning over audio. However, existing benchmarks provide limited coverage of reasoning in polyphonic audio, where multiple sound events co-occur and induce compositional structure. In this work, we introduce PolyBench, a benchmark designed to evaluate compositional reasoning in polyphonic audio. PolyBench comprises five evaluation subsets covering counting, classification, detection, concurrency, and duration estimation, requiring reasoning over multiple concurrent events and their relations. Evaluation of state-of-the-art LALMs reveals consistent performance degradation in polyphonic audio, indicating a fundamental bottleneck in current LALMs.
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