A new convolutional neural network based on a sparse convolutional layer for animal face detection

被引:0
作者
Islem Jarraya
Fatma BenSaid
Wael Ouarda
Umapada Pal
Adel M. Alimi
机构
[1] University of Sfax,REGIM
[2] National Engineering School of Sfax (ENIS),Lab.: REsearch Groups in Intelligent Machines
[3] Digital Research Center of Sfax,Computer Vision and Pattern Recognition Unit
[4] Indian Statistical Institute,Department of Electrical and Electronic Engineering Science, Faculty of Engineering and the Built Environment
[5] University of Johannesburg,undefined
来源
Multimedia Tools and Applications | 2023年 / 82卷
关键词
Animal face detection; ANOFS; Convolution neural network; MobileNetV2;
D O I
暂无
中图分类号
学科分类号
摘要
This paper focuses on the face detection problem of three popular animal categories that need control such as horses, cats and dogs. Existing detectors are generally based on Convolutional Neural Networks (CNNs) as backbones. CNNs are strong and fascinating classification tools but present some weak points such as the big number of layers and parameters, require a huge dataset and ignore the relationship between image parts. To be precise, to deal with these problems, this paper contributes to present a new Convolutional Neural Network for Animal Face Detection (CNNAFD), a new backbone CNNAFD-MobileNetV2 for animal face detection and a new Tunisian Horse Detection Database (THDD). CNNAFD used a processed filters based on gradient features and applied with a new way. A new sparse convolutional layer ANOFS-Conv is proposed through a sparse feature selection method known as Automated Negotiation-based Online Feature Selection (ANOFS). The ANOFS method is used as a training optimizer for the new ANOFS-Conv layer. CNNAFD ends by stacked fully connected layers which represent a strong classifier. The fusion of CNNAFD and MobileNetV2 constructs the new network CNNAFD-MobileNetV2 which improves the classification results and gives better detection decisions. The proposed detector with the new CNNAFD-MobileNetV2 network provides effective results and proves to be competitive with the detectors of the related works with an Average Precision equal to 98.28%, 99.78%, 99.00% and 92.86% on the THDD, Cat Database, Stanford Dogs Dataset and Oxford-IIIT Pet Dataset respectively.
引用
收藏
页码:91 / 124
页数:33
相关论文
共 29 条
[1]  
BenSaid F(2021)Online feature selection system for big data classification based on multi-objective automated negotiation Pattern Recogn 110 107-629
[2]  
Alimi AM(2010)The pascal visual object classes (voc) challenge Int J Comput Vis (IJCV) 88 303-338
[3]  
Everingham M(2016)Ssd: Single shot multibox detector European Conference on Computer Vision 9905 21-37
[4]  
Gool LV(2016)Towards a novel biometric system for smart riding club Journal of information assurance and security (JIAS) 11 201-213
[5]  
Williams CKI(2004)Robust real-time face detection Int J Comput Vis 57 137?154-3701
[6]  
Winn J(2020)Dog face detection using yolo network MENDEL Soft Computing Journal 26 2571-476
[7]  
Zisserman A(2019)Dog face detection and localization of dogface’s landmarks Advances in Intelligent Systems and Computing 764 465-1708
[8]  
Liu W(2011)From tiger to panda: Animal head detection IEEE Trans Image Process 20 1696-undefined
[9]  
Anguelov D(undefined)undefined undefined undefined undefined-undefined
[10]  
Erhan D(undefined)undefined undefined undefined undefined-undefined