A hierarchical SVG image abstraction layer for medical imaging

As medical imaging rapidly expands, there is an increasing need to structure and organize image data for efficient analysis, storage and retrieval. In response, a large fraction of research in the areas of content-based image retrieval (CBIR) and picture archiving and communication systems (PACS) has focused on structuring information to bridge the "semantic gap", a disparity between machine and human image understanding. An additional consideration in medical images is the organization and integration of clinical diagnostic information. As a step towards bridging the semantic gap, we design and implement a hierarchical image abstraction layer using an XML based language, Scalable Vector Graphics (SVG). Our method encodes features from the raw image and clinical information into an extensible "layer" that can be stored in a SVG document and efficiently searched. Any feature extracted from the raw image including, color, texture, orientation, size, neighbor information, etc., can be combined in our abstraction with high level descriptions or classifications. And our representation can natively characterize an image in a hierarchical tree structure to support multiple levels of segmentation. Furthermore, being a world wide web consortium (W3C) standard, SVG is able to be displayed by most web browsers, interacted with by ECMAScript (standardized scripting language, e.g. JavaScript, JScript), and indexed and retrieved by XML databases and XQuery. Using these open source technologies enables straightforward integration into existing systems. From our results, we show that the flexibility and extensibility of our abstraction facilitates effective storage and retrieval of medical images.

[1]  Thomas Martin Deserno,et al.  Ontology of Gaps in Content-Based Image Retrieval , 2009, Journal of Digital Imaging.

[2]  Horst M. Eidenberger,et al.  Semantic feature layers in content-based image retrieval: implementation of human world features , 2002, 7th International Conference on Control, Automation, Robotics and Vision, 2002. ICARCV 2002..

[3]  T M Lehmann,et al.  Content-based Image Retrieval in Medical Applications , 2004, Methods of Information in Medicine.

[4]  Hanan Samet,et al.  A web collaboration system for content-based image retrieval of medical images , 2007, SPIE Medical Imaging.

[5]  James Ze Wang,et al.  Image retrieval: Ideas, influences, and trends of the new age , 2008, CSUR.

[6]  Dorin Comaniciu,et al.  Mean Shift: A Robust Approach Toward Feature Space Analysis , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[7]  Kaiyuan Jiang,et al.  Information Retrieval through SVG-based Vector Images Using an Original Method , 2007 .

[8]  Antoine Geissbühler,et al.  A Review of Content{Based Image Retrieval Systems in Medical Applications { Clinical Bene(cid:12)ts and Future Directions , 2022 .

[9]  William I. Grosky,et al.  Idea Grou p Inc . Copy right Idea Grou p Inc . Copy right Idea Grou p Inc . Copy right Idea Grou p Inc . Chapter II Bridging the Semantic Gap in Image Retrieval , 2018 .

[10]  C. Peng,et al.  SCALABLE VECTOR GRAPHICS (SVG) , 2000 .

[11]  Yu Zhou,et al.  Information Retrieval through SVG-based Vector Images Using an Original Method , 2007, IEEE International Conference on e-Business Engineering (ICEBE'07).

[12]  Sameer Antani,et al.  A web-accessible content-based cervicographic image retrieval system , 2008, SPIE Medical Imaging.

[13]  Peter Meer,et al.  Edge Detection with Embedded Confidence , 2001, IEEE Trans. Pattern Anal. Mach. Intell..

[14]  Marcel Worring,et al.  Content-Based Image Retrieval at the End of the Early Years , 2000, IEEE Trans. Pattern Anal. Mach. Intell..