Litcius/Paper detail

VGGFace-Ear: An Extended Dataset for Unconstrained Ear Recognition

Solange Ramos-Cooper, Erick Gomez-Nieto, Guillermo Cámara-Chávez

2022Sensors20 citationsDOIOpen Access PDF

Abstract

Recognition using ear images has been an active field of research in recent years. Besides faces and fingerprints, ears have a unique structure to identify people and can be captured from a distance, contactless, and without the subject's cooperation. Therefore, it represents an appealing choice for building surveillance, forensic, and security applications. However, many techniques used in those applications-e.g., convolutional neural networks (CNN)-usually demand large-scale datasets for training. This research work introduces a new dataset of ear images taken under uncontrolled conditions that present high inter-class and intra-class variability. We built this dataset using an existing face dataset called the VGGFace, which gathers more than 3.3 million images. in addition, we perform ear recognition using transfer learning with CNN pretrained on image and face recognition. Finally, we performed two experiments on two unconstrained datasets and reported our results using Rank-based metrics.

Topics & Concepts

Computer scienceConvolutional neural networkArtificial intelligenceTransfer of learningPattern recognition (psychology)Face (sociological concept)Facial recognition systemClass (philosophy)Field (mathematics)Machine learningSpeech recognitionMathematicsSociologySocial sciencePure mathematicsBiometric Identification and SecurityFace recognition and analysisGait Recognition and Analysis