dc.description.abstracten |
Motion blur is a common issue in image processing and video production. It is cru-
cial to have a profound pre-processing method to address this obstacle for various
image processing applications, e.g., object detection. Many existing state-of-the-art
methods are limited to their computational complexity and memory requirements
if one wants to use them in practice on mobile devices. This work proposes sev-
eral ideas to overcome this issue and optimize existing solutions via architectural
changes and graph optimizations. Moreover, we introduced an adapted version of
Soft Attention inside skip connections and achieved a PSNR raise of 0.22 (dB) for
the selected baseline. Finally, we derived the optimized model for mobile real-time
applications without a significant drop in accuracy, e.g., obtaining 31.36 dB PSNR on
GoPro (for image deblurring) with 24 FPS on the mobile application. |
uk |