MCL Student Junting Zhang presented a paper at the 5th IEEE Global Conference on Signal and Information Processing (GlobalSIP 2017) in Montreal Quebec, Canada on November 15, 2017. Here’s an abstract of the paper :
Scene text detection is a critical prerequisite for many fascinating applications for vision-based intelligent robots. Existing methods detect texts either using the local information only or casting it as a semantic segmentation problem. They tend to produce a large number of false alarms or cannot separate individual words accurately. In this work, we present an elegant segmentation-aided text detection solution that predicts the word-level bounding boxes using an end-to-end trainable deep convolutional neural network. It exploits the holistic view of a segmentation network in generating the text attention map (TAM) and uses the TAM to refine the convolutional features for the MultiBox detector through a multiplicative gating process. We conduct experiments on the large-scale and challenging COCO-Text dataset and demonstrate that the proposed method outperforms state-of-the-art methods significantly.
MCL Student, Junting Zhang, Presented Paper at GlobalSIP 2017
By Madhvi Kannan|November 24th, 2017|News|Comments Off on MCL Student, Junting Zhang, Presented Paper at GlobalSIP 2017
Share This Story, Choose Your Platform!
About the Author: Madhvi Kannan
Madhvi Kannan is a Master's student in Electrical Engineering at USC. She graduated with a degree in Electronics and Instrumentation from R.V College of Engineering, Bangalore India in June 2016. Her current interests are in the fields of Image processing, Computer Vision and Deep Learning.
Related Posts
PreviousNext