Evaluating Novel Mask-RCNN Architectures for Ear Mask Segmentation

Saurav K. Aryal, Teanna Barrett, Gloria J. Washington
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Abstract

The human ear is generally universal, collectible, distinct, and permanent. Ear-based biometric recognition is a niche and recent approach that is being explored. For any ear-based biometric algorithm to perform well, ear detection and segmentation need to be accurately performed. While significant work has been done in existing literature for bounding boxes, a lack of approaches output a segmentation mask for ears. This paper trains and compares three newer models to the state-of-the-art MaskRCNN (ResNet 101 +FPN) model across four different datasets. The Average Precision (AP) scores reported show that the newer models outperform the state-of-the-art but no one model performs the best over multiple datasets.
评价新型掩膜- rcnn耳膜分割体系
人耳通常是通用的、可收藏的、独特的和永久的。基于耳朵的生物识别是一种正在探索的新方法。任何基于耳朵的生物识别算法要想表现良好,都需要准确地进行耳朵检测和分割。虽然在现有文献中对边界框做了大量的工作,但缺乏为耳朵输出分割掩码的方法。本文在四个不同的数据集上训练并比较了三个新模型与最先进的MaskRCNN (ResNet 101 +FPN)模型。报告的平均精度(AP)分数表明,新模型的表现优于最先进的模型,但没有一个模型在多个数据集上表现最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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