Home| Join Now | Sign In | Trainers Login              
SPIRO, Spiro, project for student, student projects
A RESEARCH & DEVELOPMENT ORGANIZATION

For Project Enquiry +91 9791 044 044

To Search
Last Live Projects with video description
VLSI Projects, Student Projects, Best Projects, College Projects Matlab Projects, vlsi projects Final Year Projects in Chennai , Final Year Training Projects in Chennai
Slideshow Image 1
Fast and Adaptive Detection of Pulmonary Nodules in Thoracic CT Images Using a Hierarchical Vector Quantization Scheme
Post Your concept Get Project
Guidance
It is purposely dedicated for innovative students. Here we encourage students who have new concepts and projects in various domains.

For Project Title


Project Zone > Electronics > Image Processing

Social share: Facebook SPIRO Google Plus

Fast and Adaptive Detection of Pulmonary Nodules in Thoracic CT Images Using a Hierarchical Vector Quantization Scheme

Category : Image Processing


Sub Category : BIOMEDICAL


Project Code : IMP07


Project Abstract

Computer-aided detection (CADe) of pulmonary nodules is critical to assisting radiologists in early identification of lung cancer from computed tomography (CT) scans. This paper proposes a novel CADe system based on a hierarchical vector quantization (VQ) scheme. Compared with the commonly-used simple thresholding approach, the high-level VQ yields a more accurate segmentation of the lungs from the chest volume. In identifying initial nodule candidates (INCs) within the lungs, the low-level VQ proves to be effective for INCs detection and segmentation, as well as computationally efficient compared to existing approaches. False-positive (FP) reduction is conducted via rule-based filtering operations in combination with a feature-based support vector machine classifier.

 

EXISTING SYSTEM

PROPOSED SYSTEM

EXISTING CONCEPT:

          The main objective is to develop a technique so that lung nodules can be detected using X-ray imaging at an early stage.

          The purpose is to develop the CADe scheme with improved sensitivity and specificity by use of Virtual Dual Energy (VDE) chest radiographs. Ribs and clavicles in the chest radiographs (X-ray images) are suppressed with MTANN.

PROPOSED CONCEPT:

          The main objective is to develop a technique so that lung nodules can be detected using computed tomography (CT) imaging method.

          The purpose is to develop the CADe scheme with improved sensitivity and specificity by use of Vector quantization (VQ).

EXISTING  TECHNIQUE :

          MULTIRESOLUTION MASSIVE TRAINING ARTIFICIAL NEURAL NETWORK (MTANN)

PROPOSED ALGORITHM:

          VECTOR QUANTIZATION (VQ)

TECHNIQUE DEFINITION:

         MTANN is an image processing technique used for suppressing the contrast parameter of ribs and clavicles.

         An MTANN is a nonlinear filter which is trained by input chest radiograph images and the corresponding training images. Using Dual-Energy subtraction, bones like images are obtained.

ALGORITHM DEFINITION:

           Hierarchical VQ scheme is doing automatic detection and segmentation of INCs.

          The general VQ framework evolves two processes: 1) the training process which determines the set of codebook vector according to the probability of the input data; and 2) the encoding process which assigns input vectors to the codebook vectors.

DRAWBACKS:

          The existing methods are not faster and adaptive.

          The ribs may cause unwanted error in the detection of pulmonary nodules.

          The processing time of x-ray image is more and so it delay’s the result of identification of pulmonary nodule.

·         Accuracy as well as efficiency is low.

ADVANTAGES:

          This project demonstrates fast and adaptive detection of pulmonary nodules in chest CT scans.

          Compared with existing CADe systems evaluated on the same lung image LIDC database, our approach showed a comparable detection capability but a lower computational cost.

·         The proposed hierarchical INCs detection approach is fast, adaptive, and fully automatic.


 
 
MILE STONES
GUARANTEES
CONTACT US
 
Training and Developemet, Engg Projects
So far we have provided R&D training for more than 1,00,000 engineering Students.
Latest Projects 2012, Latest Technologiy Project
Had conducted seminars in the recent trends of technology at various colleges.
Our research projects had been presented in various National & International Conferences.
Most of our projects were identified by the industries as suitable for their needs.
Our n-number of students got research scholarship to extend our assisted projects for further development.
   
   
Training and Developemt, Project Development in Chennai
SPIRO guarantees small class sizes.
Final Year Projects
SPIRO guarantees quality instructors.
Student Projects, Stupros
SPIRO guarantees competence.
Projects, student projects
SPIRO guarantees that training from SPIRO will be more cost-effective than training from any other source.
Final Year Projects, Projects, student projects
SPIRO guarantees that students in open-enrollment classes are protected against cancellations and will be able to receive desired training at the cost they expect and in the time frame they have planned.
Projects for student
SPIRO guarantees overall quality with a 100% money-back guarantee. If you're not totally satisfied for any reason, simply withdraw before the second day of any class. Notify the instructor and return all course materials and you will receive a 100% refund.
SPIRO SOLUTIONS PRIVATE LIMITED
For ECE,EEE,E&I, E&C & Mechanical,Civil, Bio-Medical
#1, C.V.R Complex, Singaravelu St, T.Nagar, Chennai - 17,
(Behind BIG BAZAAR)Tamilnadu,India
Mobile : +91-9962 067 067, +91-9176 499 499
Landline : 044-4264 1213
Email: info@spiroprojects.com

For IT, CSE, MSC, MCA, BSC(CS)B.COM(cs)
#78, 3rd Floor, Usman Road, T.Nagar, Chennai-17.
(Upstair Hotel Saravana Bhavan) Tamilnadu,India
Mobile: +91-9791 044 044, +91-9176 644 044
E-Mail: info1@spiroprojects.com
About Us | Project Training | Privacy policy | Disclaimer | Contact Us

Copyright © 2015-2016 Stupros All rights reserved.