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DeepASA: An Object-Oriented Multi-Purpose Network for Auditory Scene Analysis

About

We propose DeepASA, a multi-purpose model for auditory scene analysis that performs multi-input multi-output (MIMO) source separation, dereverberation, sound event detection (SED), audio classification, and direction-of-arrival estimation (DoAE) within a unified framework. DeepASA is designed for complex auditory scenes where multiple, often similar, sound sources overlap in time and move dynamically in space. To achieve robust and consistent inference across tasks, we introduce an object-oriented processing (OOP) strategy. This approach encapsulates diverse auditory features into object-centric representations and refines them through a chain-of-inference (CoI) mechanism. The pipeline comprises a dynamic temporal kernel-based feature extractor, a transformer-based aggregator, and an object separator that yields per-object features. These features feed into multiple task-specific decoders. Our object-centric representations naturally resolve the parameter association ambiguity inherent in traditional track-wise processing. However, early-stage object separation can lead to failure in downstream ASA tasks. To address this, we implement temporal coherence matching (TCM) within the chain-of-inference, enabling multi-task fusion and iterative refinement of object features using estimated auditory parameters. We evaluate DeepASA on representative spatial audio benchmark datasets, including ASA2, MC-FUSS, and STARSS23. Experimental results show that our model achieves state-of-the-art performance across all evaluated tasks, demonstrating its effectiveness in both source separation and auditory parameter estimation under diverse spatial auditory scenes.

Dongheon Lee, Younghoo Kwon, Jung-Woo Choi• 2025

Related benchmarks

TaskDatasetResultRank
Universal Sound SeparationMC-FUSS
SI-SDRi (J=2)18.9
10
Sound Event Localization and DetectionSTARSS23
Error Rate (ER)33.7
8
Direction of Arrival EstimationASA2
LE (Degrees)17
7
Sound Event DetectionASA2
Error Rate25
7
Universal Source SeparationASA2
SI-SDRi11.2
7
Sound Event Localization and DetectionASA2
SELD Score24
7
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