Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Kondo, Yuto, Kameoka, Hirokazu, Tanaka, Kou, Kaneko, Takuhiro, Harada, Noboru
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2506.19335
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
_version_ 1866911020390285312
author Kondo, Yuto
Kameoka, Hirokazu
Tanaka, Kou
Kaneko, Takuhiro
Harada, Noboru
author_facet Kondo, Yuto
Kameoka, Hirokazu
Tanaka, Kou
Kaneko, Takuhiro
Harada, Noboru
contents We tackle a new task of training neural network models that can assess subjective impressions conveyed through speech and assign scores accordingly, inspired by the work on automatic speech quality assessment (SQA). Speech impressions are often described using phrases like `cute voice.' We define such phrases as subjective voice descriptors (SVDs). Focusing on the difference in usage scenarios between the proposed task and automatic SQA, we design a framework capable of accommodating SVDs personalized to each individual, such as `my favorite voice.' In this work, we compiled a dataset containing speech labels derived from both abosolute category ratings (ACR) and comparison category ratings (CCR). As an evaluation metric for assessment performance, we introduce ppref, the accuracy of the predicted score ordering of two samples on CCR test samples. Alongside the conventional model and learning methods based on ACR data, we also investigated RankNet learning using CCR data. We experimentally find that the ppref is moderate even with very limited training data. We also discover the CCR training is superior to the ACR training. These results support the idea that assessment models based on personalized SVDs, which typically must be trained on limited data, can be effectively learned from CCR data.
format Preprint
id arxiv_https___arxiv_org_abs_2506_19335
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning to assess subjective impressions from speech
Kondo, Yuto
Kameoka, Hirokazu
Tanaka, Kou
Kaneko, Takuhiro
Harada, Noboru
Sound
We tackle a new task of training neural network models that can assess subjective impressions conveyed through speech and assign scores accordingly, inspired by the work on automatic speech quality assessment (SQA). Speech impressions are often described using phrases like `cute voice.' We define such phrases as subjective voice descriptors (SVDs). Focusing on the difference in usage scenarios between the proposed task and automatic SQA, we design a framework capable of accommodating SVDs personalized to each individual, such as `my favorite voice.' In this work, we compiled a dataset containing speech labels derived from both abosolute category ratings (ACR) and comparison category ratings (CCR). As an evaluation metric for assessment performance, we introduce ppref, the accuracy of the predicted score ordering of two samples on CCR test samples. Alongside the conventional model and learning methods based on ACR data, we also investigated RankNet learning using CCR data. We experimentally find that the ppref is moderate even with very limited training data. We also discover the CCR training is superior to the ACR training. These results support the idea that assessment models based on personalized SVDs, which typically must be trained on limited data, can be effectively learned from CCR data.
title Learning to assess subjective impressions from speech
topic Sound
url https://arxiv.org/abs/2506.19335