Audio ML Papers

Last 7 Days (July 03 - July 10, 2026)

Subcategories: All (20) | Speech Synthesis (0) | Music Synthesis (0) | Ambient Synthesis (0) | Quality Evaluation (0) | Enhancement (0) | Asr (0) | Llm Audio (0) | Midi Generation (0) | Generative Conditioning (0) | Other (20)
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🏆 Top Papers This Week

#1 TOP PAPER (Score: 81)
Yuxin Li, Donghang Wu, Guan-Ting Lin ... · arXiv
Recent full-duplex spoken dialogue models have demonstrated compelling progress toward human-like interaction, enabling agents to respond with low latency, produce backchannels, and handle user barge-ins. Yet these improvements in conversational dynamics often come with weaker re...
#2 TOP PAPER (Score: 80)
Ho-Lam Chung, Ke-Han Lu, Yi-Cheng Lin ... · arXiv
Audio-language models compress a speech encoder's output through a Querying Transformer (Q-Former) connector before feeding it to a large language model. We identify two failures in this compression. The connector's output vectors collapse to a single direction, and different spe...
#3 TOP PAPER (Score: 75)
Zihan Zhang, Shreeram Suresh Chandra, Zongyang Du ... · arXiv
Traditional emotional voice conversion (EVC) conditions generation on explicit target emotions like labels or references, defining the target affective state but omitting the direction or nature of the transition. We introduce instruction-guided relative emotional voice conversio...
Thursday, July 09, 2026
Nicole Cosme-Clifford · arXiv
End-to-end neural audio models achieve high-fidelity compression and generation. We might read that performance as evidence they directly represent interpretable features such as pitch and timbre, but a model can produce plausible outputs without doing so. A model may encode thes...
Simon Rouard, Michael Krause, Axel Roebel ... · arXiv
Existing methods for automatic music transcription are often limited to single-instrument recordings or fail on complex, real music mixes. Although previous work utilizes synthetic training data, the resulting models generalize poorly, leading to largely unusable transcription ou...
Wanyi Ning, Wei Zhou, Yingpeng Li ... · arXiv (preprint)
Training target speaker extraction (TSE) models for real conversational mixtures remains challenging because large-scale training corpora and clean target speech for supervision are unavailable. We present PS4, a proxy-supervised training framework for TSE in real conversational ...
Wednesday, July 08, 2026
Jinjie Fu, Hang Chen, Wu Guo ... · arXiv
Audio-Visual speech recognition systems often degrade in real-world scenarios due to signal corruption and distribution shifts. To address this, we propose a unified uncertainty-modeling framework, namely the uncertainty-aware Bayesian gating network (UBG-Net). UBG-Net features a...
Zheng Liang, Junjie Li, Kong Aik Lee · Interspeech 2026
Neural audio codecs (NACs) enable efficient audio compression and have achieved success in downstream tasks such as speech synthesis. However, their discrete representations consistently underperform traditional spectral features in automatic speaker verification (ASV). We empiri...
Tuesday, July 07, 2026
Thanh V. T. Tran, Ngoc-Son Nguyen, Luong Tran ... · ECCV 2026
Video-to-audio (V2A) generation aims to synthesize realistic audio that is both semantically consistent with and temporally synchronized to a silent video. Despite recent progress, many methods still rely on multi-stage training, resulting in high computational costs and long run...
Ke-Han Lu, Keqi Deng, Ruchao Fan ... · arXiv
Speech large language models (Speech LLMs) typically encode speech into sequences far longer than text, creating a major efficiency bottleneck during autoregressive decoding. A common remedy is to compress the speech sequence at the adapter level to remove temporal redundancy bef...
Dāvis Šterns, Konstantinos Drossos, Natasha Fernandes ... · arXiv (likely intended for IEEE/ACM conference or journal, e.g., ICASSP, Interspeech, or IEEE T-ASL)
Voice anonymisation aims to protect speaker identity. Currently, its empirical privacy evaluation heavily relies on the Equal Error Rate (EER). Originally designed for biometric verification, EER aggregates scores globally, implicitly assuming an attacker is only trying to verify...
Monday, July 06, 2026
Thomas Thebaud, Junhyeok Lee, Laureano Moro-Velazquez ... · IEEE SLT 2026
Speaker embeddings, or x-vectors, are widely used to represent speaker identity and speaker-related attributes, but existing embedding extractors are typically descriptive rather than generative: they map an observed speech segment to an x-vector, which is then used for downstrea...
Ho Lam Chung, Yiming Chen, Dau-Cheng Lyu ... · ISCSLP
End-to-end ASR models transcribe in a single pass, leaving no room for the decoder to revisit hard inputs. We propose LatentASR, a parameter-efficient method that adds continuous latent test-time scaling to a frozen ASR backbone. Two small trainable modules drive it: a Latent Ada...
Ganesh Pavan Kartikeya Bharadwaj Kolluri, Yuchen Zhang, Michael Kampouridis ... · arXiv
Modern automated audio captioning systems pair a frozen audio encoder with a large language model (LLM) via a trainable projector, incurring the encoder's inference cost and bottlenecking the model through its fixed acoustic features. We present CARD, an encoder-free audio captio...
Junjie Li, Yang Xiao, Kong Aik Lee · arXiv (Submitted to IEEE likely, but venue listed as arXiv)
Speaker embeddings aggregate frame-level acoustic features into compact representations for speaker recognition. Recent uncertainty-aware speaker modeling approaches further characterize the reliability of speaker embeddings by estimating their associated uncertainty. However, ex...
Sunday, July 05, 2026
Zihan Zhang, Xize Cheng, Wenhao Yan ... · arXiv
Large Audio-Language Models (LALMs) reason fluently about sound yet struggle to localize precisely when events occur, while classical Sound Event Detection attains frame-level precision only over a closed label set. At the intersection of these paradigms lies the task of Open-Voc...
Junwon Moon, Seungbeom Kim, Yejin Lee ... · ICML 2026 SPIGM Workshop
Autoregressive (AR) text-to-speech (TTS) models generate discrete speech tokens sequentially, which makes inference slow and can degrade robustness by propagating local errors and hallucinations. This limitation stems from their left-to-right AR commitment: each token must be det...
Saturday, July 04, 2026
Qibing Bai, Shuai Wang, Yuhan Du ... · arXiv (Journal Version of Interspeech 2025)
Accent normalization (AN) seeks to convert non-native (L2) accented speech into standard (L1) speech while preserving speaker identity. The current techniques either require naturally recorded parallel L1-L2 speech for training, or suffer from quality degradation when supervised ...
Yishun Li, Yang Xiao, Gongping Huang ... · arXiv
Training automatic speech recognition (ASR) models for low-resource languages is challenging due to limited data and highly variable supervision quality. In particular, Pacific Indigenous speech corpora often exhibit heterogeneous acoustic conditions, transcript inconsistencies, ...
Friday, July 03, 2026
Matteo Spanio, Antonio Rodà · IEEE CBMI 2026 (MusiCHER Special Session)
Crossmodal correspondences between sound and taste are well established in psychology and neuroscience, but largely absent from content-based multimedia retrieval. We formalise taste-from-audio prediction as a content-based music information retrieval benchmark over a perceptuall...