Abstract

Ear detection represents one of the key components of contemporary ear recognition systems. While significant progress has been made in the area of ear detection over recent years, most of the improvements are direct results of advances in the field of visual object detection. Only a limited number of techniques presented in the literature are domain–specific and designed explicitly with ear detection in mind. In this paper, we aim to address this gap and present a novel detection approach that does not rely only on general ear (object) appearance, but also exploits contextual information, i.e., face–part locations, to ensure accurate and robust ear detection with images captured in a wide variety of imaging conditions. The proposed approach is based on a Contex t–aware ${E}$ ar ${D}$ etection Net work (ContexedNet) and poses ear detection as a semantic image segmentation problem. ContexedNet consists of two processing paths: i) a context–provider that extracts probability maps corresponding to the locations of facial parts from the input image, and ii) a dedicated ear segmentation model that integrates the computed probability maps into a context–aware segmentation-based ear detection procedure. ContexedNet is evaluated in rigorous experiments on the AWE and UBEAR datasets and shown to ensure competitive performance when evaluated against state–of–the–art ear detection models from the literature. Additionally, because the proposed contextualization is model agnostic, it can also be utilized with other ear detection techniques to improve performance.

Highlights

  • Ear detection is a crucial component and typically the first step in modern ear recognition systems

  • We present in this paper a novel approach to ear detection that in addition to ear appearance relies on contextual information to boost performance

  • ContexedNet significantly outperforms PED–CED and ensures a considerable improvements over DeepLab, which represents a context–free segmentation model. These results clearly demonstrate the added value of contextual information for the task of ear detection/segmentation and the superiority of the proposed ContexedNet

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Summary

Introduction

Ear detection is a crucial component and typically the first step in modern ear recognition systems. Designed ear detection models adversely affect the performance of all downstream tasks of the recognition system, including normalization procedures, feature extraction techniques and classification approaches. Segmentation-based methods, on the other hand, approach ear detection as a segmentation problem and exploit advances made in the area of semantic image segmentation [15]–[17]. Both detection and segmentation–based solutions have been shown to ensure competitive performance for ear detection on a wide variety of datasets and imaging conditions [1], [6], [7].

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