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Simultaneous Sparsity Model for Histopathological

The multi-channel nature of digital histopathological images presents an opportunity to exploit the correlated color channel information for better image modeling. Inspired by recent work in sparsity for single channel image classification, we propose a new simultaneous sparsity model for multi-channel histopathological image representation and classification (SHIRC). http://kaashivinfotech.com/ http://inplanttrainingchennai.com/ http://inplanttraining-in-chennai.com/ http://internshipinchennai.in/ http://inplant-training.org/ http://kernelmind.com/ http://inplanttraining-in-chennai.com/ http://inplanttrainingchennai.com/ Contact Us 91 98406 78906, 91 90037 18877 kaashiv.info@gmail.com www.kaashivinfotech.com Shivanantha Building (Second building to Ayyappan Temple), X41, 5th Floor, 2nd avenue, Anna Nagar,Chennai-40

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Simultaneous Sparsity Model for Histopathological

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  1. FeatureSpaceScaled 2D SegmentedSkinImages IEEE TRANSACTIONS ON MEDICAL IMAGING, VOL. 33, NO. 5, MAY 2014 1163 Simultaneous Sparsity Model for Histopathological Image Representation and Classification

  2. A Software /Manufacturing Research Company Run By Microsoft Most Valuable Professional VenkatesanPrabu .J MANAGING DIRECTOR Microsoft Web Developer Advisory Council team member and a well known Microsoft Most Valuable Professional (MVP) for the year 2008, 2009, 2010,2011,2012,2013 ,2014. LakshmiNarayanan.J GENERAL MANAGER BlackBerry Server Admin. Oracle 10g SQL Expert. Arunachalam.J Electronic Architect Human Resourse Manager

  3. Abstract • The multi-channel nature of digital histopathological images presents an opportunity to exploit the correlated color channel information for better image modeling. • Inspired by recent work in sparsity for single channel image classification, we propose a new simultaneous sparsity model for multi-channel histopathological image representation and classification (SHIRC). • Essentially, we represent a histopathological image as a sparse linear combination of training examples under suitable channel-wise constraints. Classification is performed by solving a newly formulated simultaneous sparsity-based optimization problem. • A practical challenge is the correspondence of image objects (cellular and nuclear structures) at different spatial locations in the image. • We propose a robust locally adaptive variant of SHIRC (LA-SHIRC) to tackle this issue. Experiments on two challenging real-world image data sets: 1) mammalian tissue images acquired by pathologists of the animal diagnostics lab (ADL) at Pennsylvania State University, and 2

  4. Proposed System • Psoriasis skin segmentation images were digitally captured under controlled environment in our proposed system. • This paper shows that certain normalization technique can be employed to distinguish the Markov random field (MRF) of psoriasis skin diseases infecting the further analysis symptoms of psoriasis. • In clinical diagnostic, dermatologist usually groups the psoriasis skin segmentation pattern in order to reduce the problem of segmenting in our proposed concept. • There are several pre-processing techniques, filtering techniques and morphological processing techniques employed in this image segmentation process to eradicate the affected areas of psoriasis

  5. Existing System • In many cases, our existing system portrays that the early leg diseases (psoriasis) diagnosis is difficult and may be confusing, so hence it may affect treatments to the patients at a wide range of inflamed skin. • Usually this chronic inflammatory skin disease have a discrete psoriasis skin pattern with poor border definition, which may not be easy to analyze and figure out . • It has a variety of clinical presentations, most of which eventuate into assessment of psoriasis severity and often on the area where scaly patches of itchy skin presents.

  6. System Requirements • Hardware Requirements: Processor : Core 2 duo Speed : 2.2GHZ RAM : 2GB Hard Disk : 160GB • Software Requirements:  Platform : DOTNET (VS2010) Dot net framework 4.0 Database : SQL Server 2008 R2

  7. Architecture Diagram

  8. Records Breaks Asia Book Of Records Tamil Nadu Of Records India Of Records MVP Awards World Record

  9. Services: A Software /Manufacturing Research Company Run By Microsoft Most Valuable Professional Inplant Training. Internship. Workshop’s. Final Year Project’s. Industrial Visit. Contact Us: +91 98406 78906,+91 90037 18877 kaashiv.info@gmail.com www.kaashivinfotech.com Shivanantha Building (Second building to Ayyappan Temple),X41, 5th Floor, 2nd avenue,Anna Nagar,Chennai-40.

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