Characterization and pattern recognition of color images of dermatological ulcers - a pilot study
نویسندگان
چکیده
We present color image processing methods for the characterization of images of dermatological lesions for the purpose of content-based image retrieval (CBIR) and computer-aided diagnosis. The intended application is to segment the images and perform classification and analysis of the tissue composition of skin lesions or ulcers, in terms of granulation (red), fibrin (yellow), necrotic (black), callous (white), and mixed tissue composition. The images were analyzed and classified by an expert dermatologist following the red-yellow-black-white model. Automatic segmentation was performed by means of clustering using Gaussian mixture modeling, and its performance was evaluated by deriving the Jaccard coefficient between the automatically and manually segmented images. Statistical texture features were derived from cooccurrence matrices of RGB, HSI, L∗a∗b∗, and L∗u∗v∗ color components. A retrieval engine was implemented using the knearest-neighbor classifier and the Euclidean, Manhattan, and Chebyshev distance metrics. Classification was performed by c ©2014 by Lucas C. Pereyra, Sı́lvio M. Pereira, Juliana P. Souza, Marco A. C. Frade, Rangaraj M. Rangayyan, Paulo M. Azevedo-Marques. ∗This work was partially supported by The National Council for Scientific and Technological Development (CNPq) — grants 472508/2010-5, 304225/2010-0, and 573714/2008-8 (INCT/INCoD), and the Natural Sciences and Engineering Research
منابع مشابه
Assessment and Analysis on Color Image Classification Techniques of Dermatological Ulcers
With the implementation of color image processing methods, the image of dermatological ulcers are analyzed in order to detect the affected area of the skin. The detection of classification rate focus on the application of feature extraction method that segment, classify and analyze the tissue composition of skin lesions or ulcers. Indexing of skin ulcer images was performed based on the statist...
متن کاملIntegration of Color Features and Artificial Neural Networks for In-field Recognition of Saffron Flower
ABSTRACT-Manual harvesting of saffron as a laborious and exhausting job; it not only raises production costs, but also reduces the quality due to contaminations. Saffron quality could be enhanced if automated harvesting is substituted. As the main step towards designing a saffron harvester robot, an appropriate algorithm was developed in this study based on image processing techniques to recogn...
متن کاملOn the use of Textural Features and Neural Networks for Leaf Recognition
for recognizing various types of plants, so automatic image recognition algorithms can extract to classify plant species and apply these features. Fast and accurate recognition of plants can have a significant impact on biodiversity management and increasing the effectiveness of the studies in this regard. These automatic methods have involved the development of recognition techniques and digi...
متن کاملFace Detection with methods based on color by using Artificial Neural Network
The face Detection methodsis used in order to provide security. The mentioned methods problems are that it cannot be categorized because of the great differences and varieties in the face of individuals. In this paper, face Detection methods has been presented for overcoming upon these problems based on skin color datum. The researcher gathered a face database of 30 individuals consisting of ov...
متن کاملA New Approach towards Precise Planar Feature Characterization Using Image Analysis of FMI Image: Case Study of Gachsaran Oil Field Well No. 245, South West of Iran
Formation micro imager (FMI) can directly reflect changes of wall stratums and rock structures. Conventionally, FMI images mainly are analyzed with manual processing, which is extremely inefficient and incurs a heavy workload for experts. Iranian reservoirs are mainly carbonate reservoirs, in which the fractures have an important effect on permeability and petroleum production. In this paper, a...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- The Computer Science Journal of Moldova
دوره 22 شماره
صفحات -
تاریخ انتشار 2014