Fast JPEG 2000 Decoder and Its Use in Medical Imaging
#1

Abstract
Over the last decade, a picture archiving and communications system (PACS) has been accepted by an increasing number of clinical organizations. Today, PACS is considered as an essential image management and productivity enhancement tool. Image compression could further increase the attractiveness of PACS by reducing the time and cost in image transmission and storage as long as 1) image quality is not degraded and 2) compression and decompression can be done fast and inexpensively. Compared to JPEG, JPEG 2000 is a new image compression standard that has been designed to provide improved image quality at the expense of increased computation. Typically, the decompression time has a direct impact on the overall response time taken to display images after they are requested by the radiologist or referring clinician. In this paper, we present a fast JPEG 2000 decoder running on a low-cost programmable processor. It can decode a losslessly compressed 2048 2048 CR image in 1.51 s. Using this kind of a decoder, performing JPEG 2000 decompression at the PACS display workstation right before images are displayed becomes viable. A response time of 2 s can be met with an effective transmission throughput between the central short-term archive and the workstation of 4.48 Mb/s in case of CT studies and 20.2 Mb/s for CR studies. We have found that JPEG 2000 decompression at the workstation is advantageous in that the desired response time can be obtained with slower communication channels compared to transmission of uncompressed images. Index Terms—Digital Imaging and Communications in Medicine committee (DICOM), fast decoder, image compression, JPEG 2000, picture archiving and communications system (PACS), response time.
I. INTRODUCTION
OVER the last decade, a picture archiving and communications system (PACS) has been accepted by an increasing number of clinical organizations [1]. Today, PACS is considered by clinicians and hospital administrators alike as an essential image management and productivity enhancement tool. PACS aims at providing an all-digital radiology department in hospitals for acquisition, distribution, display, and archival of images from various imaging modalities. Image compression has increased the viability of teleradiology applications by reducing the bandwidth requirements and allowing expeditious and cost-effective delivery of medical images to radiologists located elsewhere for primary diagnosis [2]. Similarly, image compression can make the implementation of PACS more at- tractive by reducing transmission and storage requirements and making it more responsive. Data compression can be lossless or lossy. Lossless compression can reconstruct the original image without any change, but has limited compression capabilities. Clunie [3] evaluated various lossless compression techniques for medical images and reported a compression ratio ranging from 1.66 to 3.91. Lossy compression can achieve a higher compression ratio at the cost of some information loss in the compression/decompression process. Several studies [4]–[6] have been performed to evaluate the effect of lossy compression on the diagnostic quality of the image. All these studies used transform-based compression techniques based on either discrete cosine transform (DCT) or discrete wavelet transform (DWT) and reported compression ratios ranging from 10:1 to 20:1 as being suitable for the purpose of making primary diagnosis on CR images. Wavelet-based compression is regarded as being superior to DCT-based compression methods [4], [7], [8]. However, lack of an international standard based on the wavelet transform has hindered its widespread use in medical imaging. Some companies use their own proprietary wavelet-based compression techniques, which is allowed within the framework of the Digital Imaging and Communications in Medicine committee (DICOM), but it does not facilitate interconnectivity, particularly across equipment and systems from different vendors. The International Standards Organization (ISO) has recently standardized a new image compression standard, JPEG 2000 [9]. Similar to JPEG, it is a transform-based compression technique and supports both lossless and lossy modes. It utilizes wavelet transform properties along with bit-plane and arithmetic coding to achieve better compression. Foos et al. [10] conducted a study to compare the diagnostic quality of images compressed using JPEG 2000 to that using JPEG. For CR images, they concluded that there is no loss of diagnostic information for both compression standards with 1 bit per pixel (bpp). At bit rates lower than 1 bpp, JPEG-compressed images showed more degradation due to blocking artifacts arising from the use of 8 8 DCT. For CT images, they observed JPEG 2000 compressed images as being superior at all bit rates. JPEG 2000 has been designed to provide improved compression, i.e., at the same bit rate, it offers better quality images or at the same image quality, and it produces lower bit rates, compared to the existing standards at the expense of a significantly increased amount of computation, leading to longer compression and decompression times.

Download full report
http://ieeexplore.ieeeiel5/4233/27562/01229856.pdf
Reply

Important Note..!

If you are not satisfied with above reply ,..Please

ASK HERE

So that we will collect data for you and will made reply to the request....OR try below "QUICK REPLY" box to add a reply to this page
Popular Searches: project 2000 gun, is 456 2000 pdf free download, applying jpeg compression algorithm on segmented medical images matlab code, memory allocation error autocad 2000, recent advances from 2000 2005, ieee std 80 2000 pdf, training 2000 job,

[-]
Quick Reply
Message
Type your reply to this message here.

Image Verification
Please enter the text contained within the image into the text box below it. This process is used to prevent automated spam bots.
Image Verification
(case insensitive)

Possibly Related Threads...
Thread Author Replies Views Last Post
  DESIGN AND IMPLEMENTATION OF GOLAY ENCODER AND DECODER computer science crazy 2 23,323 26-08-2016, 03:46 PM
Last Post: anasek
  ANTI THEFT ALERT AND AUTO ARRESTING SYSTEM FOR MUSEUMS AND JEWELRY SHOPS project report helper 11 14,494 12-08-2013, 09:57 AM
Last Post: computer topic
  Medical image fusion smart paper boy 3 2,313 13-03-2013, 11:42 AM
Last Post: computer idea
  FAST HADAMARD TRANSFORMS computer science crazy 1 1,651 08-01-2013, 04:16 PM
Last Post: Guest
  AUTOMATIC VEHICLE ACCIDENT DETECTION AND MESSAGING SYSTEM USING GSM AND GPS MODEM smart paper boy 14 10,737 02-01-2013, 06:16 PM
Last Post: naidu sai
  RF Controlled Robot with Metal Detector and Wireless image and voice transmission(Mod seminar class 1 3,886 06-11-2012, 12:37 PM
Last Post: seminar details
  Salt-and-Pepper Noise Removal by Median-type Noise Detectors and Detail-preserving seminar class 1 2,305 24-10-2012, 01:45 PM
Last Post: seminar details
  LIVE HUMAN DETECTION AND TRACKING USING GPS AND SEND SMS THROUGH GSM TO A MOBILE project report tiger 14 15,518 07-03-2012, 09:51 AM
Last Post: seminar paper
  THE JPEG IMAGE COMPRESSION full report seminar class 1 2,358 16-02-2012, 12:23 PM
Last Post: seminar paper
  Automatic Segmentation of Digital Images Applied In Cardiac Medical Images seminar class 1 3,375 06-02-2012, 10:46 AM
Last Post: seminar addict

Forum Jump: