cs.AI updates on arXiv.org 09月15日
深度学习在法医年龄估算中的应用与透明度提升
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本文提出一种框架,旨在提高法医年龄估算中深度学习模型性能与透明度,通过结合卷积自编码器与视觉Transformer,提高牙齿分类准确性,并提供多角度诊断洞察,为法医年龄估算提供更可靠的工具。

arXiv:2509.09911v1 Announce Type: cross Abstract: The practical adoption of deep learning in high-stakes forensic applications, such as dental age estimation, is often limited by the 'black box' nature of the models. This study introduces a framework designed to enhance both performance and transparency in this context. We use a notable performance disparity in the automated staging of mandibular second (tooth 37) and third (tooth 38) molars as a case study. The proposed framework, which combines a convolutional autoencoder (AE) with a Vision Transformer (ViT), improves classification accuracy for both teeth over a baseline ViT, increasing from 0.712 to 0.815 for tooth 37 and from 0.462 to 0.543 for tooth 38. Beyond improving performance, the framework provides multi-faceted diagnostic insights. Analysis of the AE's latent space metrics and image reconstructions indicates that the remaining performance gap is data-centric, suggesting high intra-class morphological variability in the tooth 38 dataset is a primary limiting factor. This work highlights the insufficiency of relying on a single mode of interpretability, such as attention maps, which can appear anatomically plausible yet fail to identify underlying data issues. By offering a methodology that both enhances accuracy and provides evidence for why a model may be uncertain, this framework serves as a more robust tool to support expert decision-making in forensic age estimation.

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深度学习 法医年龄估算 透明度提升 卷积自编码器 视觉Transformer
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