DenseNet-II: an improved deep convolutional neural network for melanoma cancer detection

被引:17
|
作者
Girdhar, Nancy [1 ]
Sinha, Aparna [2 ]
Gupta, Shivang [2 ]
机构
[1] Bennett Univ, Sch Comp Sci Engn & Technol, Greater Noida, UP, India
[2] Amity Univ, Amity Sch Engn & Technol, Noida, UP, India
关键词
Melanoma detection; ResNet; DenseNet; VGG; Lesions; HAM10000; Deep learning; Machine learning; IMAGE CLASSIFICATION; SKIN-CANCER; ARTIFICIAL-INTELLIGENCE; COLLECTIVE INTELLIGENCE; LEVEL CLASSIFICATION; DERMATOLOGISTS; PREDICTION;
D O I
10.1007/s00500-022-07406-z
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Research in the field of medicine and relevant studies evince that melanoma is one of the deadliest cancers. It defines precisely that the condition develops due to uncontrolled growth of melanocytic cells. The current trends in any disease detection revolve around the usage of two main categories of models; these are general machine learning models and deep learning models. Further, the experimental analysis of melanoma has an additional requirement of visual records like dermatological scans or normal camera lens images. This further accentuates the need for a more accurate model for melanoma detection. In this work, we aim to achieve the same, primarily by the extensive usage of neural networks. Our objective is to propose a deep learning CNN framework-based model to improve the accuracy of melanoma detection by customizing the number of layers in the network architecture, activation functions applied, and the dimension of the input array. Models like Resnet, DenseNet, Inception, and VGG have proved to yield appreciable accuracy in melanoma detection. However, in most cases, the dataset was classified into malignant or benign classes only. The dataset used in our research provides seven lesions; these are melanocytic nevi, melanoma, benign keratosis, basal cell carcinoma, actinic keratoses, vascular lesions, and dermatofibroma. Thus, through the HAM10000 dataset and various deep learning models, we diversified the precision factors as well as input qualities. The obtained results are highly propitious and establish its credibility.
引用
收藏
页码:13285 / 13304
页数:20
相关论文
共 50 条
  • [21] SRP-YOLOX: An improved deep convolutional neural network for automated via detection
    Yang, Yi
    Zhou, Lin
    MICROELECTRONICS RELIABILITY, 2023, 147
  • [22] Deep Convolutional Generative Adversarial Network and Convolutional Neural Network for Smoke Detection
    Yin, Hang
    Wei, Yurong
    Liu, Hedan
    Liu, Shuangyin
    Liu, Chuanyun
    Gao, Yacui
    Liu, Shuangyin (hdlsyxlq@126.com), 1600, Hindawi Limited (2020):
  • [23] An improved deep learning convolutional neural network for crack detection based on UAV images
    Omoebamije, Oluwaseun
    Omoniyi, Tope Moses
    Musa, Abdullahi
    Duna, Samson
    INNOVATIVE INFRASTRUCTURE SOLUTIONS, 2023, 8 (09)
  • [24] An improved deep learning convolutional neural network for crack detection based on UAV images
    Oluwaseun Omoebamije
    Tope Moses Omoniyi
    Abdullahi Musa
    Samson Duna
    Innovative Infrastructure Solutions, 2023, 8
  • [25] YOLOv5-CSF: an improved deep convolutional neural network for flame detection
    Chunman Yan
    Qingpeng Wang
    Yufan Zhao
    Xiang Zhang
    Soft Computing, 2023, 27 : 19013 - 19023
  • [26] IMPROVED OBJECT DETECTION IN VIDEO SURVEILLANCE USING DEEP CONVOLUTIONAL NEURAL NETWORK LEARNING
    Dhiyanesh, B.
    Kanna, Rajesh K.
    Rajkumar, S.
    Radha, R.
    PROCEEDINGS OF THE 2021 FIFTH INTERNATIONAL CONFERENCE ON I-SMAC (IOT IN SOCIAL, MOBILE, ANALYTICS AND CLOUD) (I-SMAC 2021), 2021, : 913 - 920
  • [27] Melanoma detection using Egret search golden optimization - Deep convolutional neural network model
    Fatima, Sania
    Akther, Shameem
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2024, 96
  • [28] Automatic Detection of Melanoma with Yolo Deep Convolutional Neural Networks
    Nie, Yali
    Sommella, Paolo
    O'Nils, Mattias
    Liguori, Consolatina
    Lundgren, Jan
    2019 E-HEALTH AND BIOENGINEERING CONFERENCE (EHB), 2019,
  • [29] Deep Features using Convolutional Neural Network for Early Stage Cancer Detection
    Pratiher, Sawon
    Bhattacharya, Shubhobrata
    Mukhopadhyay, Sabyasachi
    Ghosh, Nirmalya
    Pasupuleti, Gautham
    Panigrahi, Prasanta K.
    OPTICS, PHOTONICS, AND DIGITAL TECHNOLOGIES FOR IMAGING APPLICATIONS V, 2018, 10679
  • [30] Automatic Detection and Segmentation of Colorectal Cancer with Deep Residual Convolutional Neural Network
    Akilandeswari, A.
    Sungeetha, D.
    Joseph, Christeena
    Thaiyalnayaki, K.
    Baskaran, K.
    Ramalingam, R. Jothi
    Al-Lohedan, Hamad
    Al-Dhayan, Dhaifallah M.
    Karnan, Muthusamy
    Hadish, Kibrom Meansbo
    EVIDENCE-BASED COMPLEMENTARY AND ALTERNATIVE MEDICINE, 2022, 2022