Use Image Clustering to Facilitate Technology Assisted Review
This work addresses the need for TAR systems to handle images, but it is incremental as it builds on existing image analytics applications.
The paper tackles the problem of incorporating multimedia content into Technology Assisted Review (TAR) by applying image clustering, using statistics from real projects to demonstrate its effectiveness.
During the past decade breakthroughs in GPU hardware and deep neural networks technologies have revolutionized the field of computer vision, making image analytical potentials accessible to a range of real-world applications. Technology Assisted Review (TAR) in electronic discovery though traditionally has dominantly dealt with textual content, is witnessing a rising need to incorporate multimedia content in the scope. We have developed innovative image analytics applications for TAR in the past years, such as image classification, image clustering, and object detection, etc. In this paper, we discuss the use of image clustering applications to facilitate TAR based on our experiences in serving clients. We describe our general workflow on leveraging image clustering in tasks and use statistics from real projects to showcase the effectiveness of using image clustering in TAR. We also summarize lessons learned and best practices on using image clustering in TAR.