There has been an alarming increase in the number of skin cancer cases worldwide in recent years, which has raised interest in computational systems for automatic diagnosis to assist early diagnosis and prevention. Feature extraction to describe skin lesions is a challenging research area due to the difficulty in selecting meaningful features. The main objective of this work is to find the best combination of features, based on shape properties, colour variation and texture analysis, to be extracted using various feature extraction methods. Several colour spaces are used for the extraction of both colour- and texture-related features. Different categories of classifiers were adopted to evaluate the proposed feature extraction step, and seve...
Abstract Skin cancer is the most well‐known disease found in the individuals who are exposed to the ...
Computer-aided diagnosis (CAD) systems based on deep learning approaches are now feasible due to the...
This thesis offers an insight into skin cancer detection, focusing on the extraction of distinct fea...
There has been an alarming increase in the number of skin cancer cases worldwide in recent years, wh...
Visual inspection of visible light dermoscopic images can be challenging due to the similarity betwe...
In this paper a methodological approach to the classification of pigmented skin lesions in dermoscop...
Features such as shape and color are indispensable to determine whether a skin lesion is a melanomao...
Melanoma, one type of skin cancer is considered o the most dangerous form of skin cancer occurred in...
According to medical reports and statistics, skin diseases have millions of victims worldwide. These...
Background and Objective. Skin cancer is the most common cancer worldwide. One of the most common no...
During the last years, computer-vision-based diagnosis systems have been used in several hospitals a...
Skin cancer is considered as one of the most common types of cancer in several countries, and its in...
Purpose: We present a classifier for automatically selecting a lesion border for dermoscopy skin les...
Melanoma skin cancer has been one of the most risings of all cancer, especially among non-Hispanic w...
Skin cancer has a malignant type that is Melanoma and two benign types Nevus and Seborrheic Keratosi...
Abstract Skin cancer is the most well‐known disease found in the individuals who are exposed to the ...
Computer-aided diagnosis (CAD) systems based on deep learning approaches are now feasible due to the...
This thesis offers an insight into skin cancer detection, focusing on the extraction of distinct fea...
There has been an alarming increase in the number of skin cancer cases worldwide in recent years, wh...
Visual inspection of visible light dermoscopic images can be challenging due to the similarity betwe...
In this paper a methodological approach to the classification of pigmented skin lesions in dermoscop...
Features such as shape and color are indispensable to determine whether a skin lesion is a melanomao...
Melanoma, one type of skin cancer is considered o the most dangerous form of skin cancer occurred in...
According to medical reports and statistics, skin diseases have millions of victims worldwide. These...
Background and Objective. Skin cancer is the most common cancer worldwide. One of the most common no...
During the last years, computer-vision-based diagnosis systems have been used in several hospitals a...
Skin cancer is considered as one of the most common types of cancer in several countries, and its in...
Purpose: We present a classifier for automatically selecting a lesion border for dermoscopy skin les...
Melanoma skin cancer has been one of the most risings of all cancer, especially among non-Hispanic w...
Skin cancer has a malignant type that is Melanoma and two benign types Nevus and Seborrheic Keratosi...
Abstract Skin cancer is the most well‐known disease found in the individuals who are exposed to the ...
Computer-aided diagnosis (CAD) systems based on deep learning approaches are now feasible due to the...
This thesis offers an insight into skin cancer detection, focusing on the extraction of distinct fea...