Iranian Journal of Radiology, 2019
View PDFchevron_rightDeep ensemble learning for skin lesions classification with convolutional neural networkSiti NurmainiIAES International Journal of Artificial Intelligence (IJ-AI)
One type of skin cancer that is considered a malignant tumor is melanoma. Such a dangerous disease can cause a lot of death in the world. The early detection of skin lesions becomes an important task in the diagnosis of skin cancer. Recently, a machine learning paradigm emerged known as deep learning (DL) utilized for skin lesions classification. However, in some previous studies by using seven class images diagnostic of skin lesions classification based on a single DL approach with CNNs architecture does not produce a satisfying performance. The DL approach allows the development of a medical image analysis system for improving performance, such as the deep convolutional neural networks (DCNNs) method. In this study, we propose an ensemble learning approach that combines three DCNNs architectures such as Inception V3, Inception ResNet V2 and DenseNet 201 for improving the performance in terms of accuracy, sensitivity, specificity, precision, and F1-score. Seven classes of dermoscop...
View PDFchevron_rightScaledDenseNet: An Efficient Deep Learning Architecture for Skin Lesion IdentificationRevati M WahulRevue d'intelligence artificielle, 2023
View PDFchevron_rightLearning A Meta-Ensemble Technique For Skin Lesion Classification And Novel Class DetectionDeepti R.Bathula2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), 2020
View PDFchevron_rightSolo or Ensemble? Choosing a CNN Architecture for Melanoma ClassificationFabio Perez2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW), 2019
View PDFchevron_rightEnsemble of Convolutional Neural Networks for Dermoscopic Images ClassificationSule Yildirim-YayilganArXiv, 2018
In this report, we are presenting our automated prediction system for disease classification within dermoscopic images. The proposed solution is based on deep learning, where we employed transfer learning strategy on VGG16 and GoogLeNet architectures. The key feature of our solution is preprocessing based primarily on image augmentation and colour normalization. The solution was evaluated on Task 3: Lesion Diagnosis of the ISIC 2018: Skin Lesion Analysis Towards Melanoma Detection.
View PDFchevron_rightSkin Lesion Segmentation and Classification with Deep Learning SystemDevansh BislaArXiv, 2019
Melanoma is one of the ten most common cancers in the US. Early detection is crucial for survival, but often the cancer is diagnosed in the fatal stage. Deep learning has the potential to improve cancer detection rates, but its applicability to melanoma detection is compromised by the limitations of the available skin lesion databases, which are small, heavily imbalanced, and contain images with occlusions. We propose a complete deep learning system for lesion segmentation and classification that utilizes networks specialized in data purification and augmentation. It contains the processing unit for removing image occlusions and the data generation unit for populating scarce lesion classes, or equivalently creating virtual patients with pre-defined types of lesions. We empirically verify our approach and show superior performance over common baselines.
View PDFchevron_rightClassification of Skin Cancer Images with Convolutional Neural Network ArchitecturesAhmet Çinar2021
View PDFchevron_rightNeural network edge detection and skin lesions image segmentation methods: analysis and evaluationMAHER I. RAJAB2003
View PDFchevron_rightSkin Lesion Segmentation and Classification Using Deep LearningIJRASET PublicationInternational Journal for Research in Applied Science & Engineering Technology (IJRASET), 2023
Classification of skin lesions has recently received a lot of attention. Due to the high degree of similarity between the skin lesions, physicians frequently take a long time to examine them. A deep learning-based automated classification system can help doctors identify the type of skin lesion and improve the patient's health. With the development of deep learning architecture, the classification of skin lesions has emerged as a popular area of research. In this research, we present a method to use segmentation and techniques like Averaging of Deep Learning Architectures and classify skin lesions. We evaluated the proposal using a large dataset: HAM 10000. Our numerical results using VGGNet and ResNet using good results on the mentioned dataset. I.
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