Devaguptapu, Chaitanya and Ninad, Akolekar and Manuj M, Sharma and Balasubramanian, Vineeth N
(2019)
Borrow from Anywhere: Pseudo Multi-modal Object Detection in Thermal Imagery.
arXiv.
pp. 1-10.
Abstract
Can we improve detection in the thermal domain by borrowing features from rich domains like visual RGB? In this
paper, we propose a ‘pseudo-multimodal’ object detector
trained on natural image domain data to help improve the
performance of object detection in thermal images. We assume access to a large-scale dataset in the visual RGB domain and relatively smaller dataset (in terms of instances)
in the thermal domain, as is common today. We propose the
use of well-known image-to-image translation frameworks
to generate pseudo-RGB equivalents of a given thermal image and then use a multi-modal architecture for object detection in the thermal image. We show that our framework
outperforms existing benchmarks without the explicit need
for paired training examples from the two domains. We also
show that our framework has the ability to learn with less
data from thermal domain when using our approach
Actions (login required)
|
View Item |