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Ear Detection in the Wild Using Faster R-CNN Deep Learning

机译:使用更快的R-CNN深度学习进行野外耳朵检测

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Ear recognition has its advantages in identifying non-cooperative individuals in unconstrained environments. Ear detection is a major step within the ear recognition algorithmic process. While conventional approaches for ear detection have been used in the past, Faster Region-based Convolutional Neural Network (Faster R-CNN) based detection methods have recently achieved superior detection performance in various benchmark studies, including those on face detection. In this work, we propose an ear detection system that uses Faster R-CNN. The training of the system is performed on two stages: First, an AlexNet model is trained for classifying ear vs. non-ear segments. Second, the unified Region Proposal Network (RPN) with the AlexNet, that shares the convolutional features, are trained for ear detection. The proposed system operates in real-time and accomplishes 98 % detection rate on a test set, composed of data coming from different ear datasets. In addition, the system's ear detection performance is high even when the test images are coming from un-controlled settings with a wide variety of images in terms of image quality, illumination and ear occlusion.
机译:耳朵识别在识别不受约束的环境中的非合作者方面具有优势。耳朵检测是耳朵识别算法过程中的主要步骤。尽管过去已经使用传统的耳朵检测方法,但是基于快速区域的卷积神经网络(Faster R-CNN)的检测方法最近在各种基准研究(包括面部检测)中都取得了卓越的检测性能。在这项工作中,我们提出了一种使用Faster R-CNN的耳朵检测系统。系统的训练分两个阶段进行:首先,训练AlexNet模型以对耳段和非耳段进行分类。其次,训练具有耳朵卷积功能的带有AlexNet的统一区域提议网络(RPN)。拟议的系统实时运行,并在测试集上完成98%的检测率,该测试集由来自不同耳朵数据集的数据组成。此外,即使测试图像来自不受控制的设置,并且在图像质量,照度和耳朵遮挡方面具有多种图像,该系统的耳朵检测性能也很高。

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