Object recognition systems are usually trained and evaluated on high
resolution images. However, in real world applications, it is common that the
images have low resolutions or have small sizes. In this study, we first track
the performance of the state-of-the-art deep object recognition network,
Faster- RCNN, as a function of image resolution. The results reveals negative
effects of low resolution images on recognition performance. They also show
that different spatial frequencies convey different information about the
objects in recognition process. It means multi-resolution recognition system
can provides better insight into optimal selection of features that results in
better recognition of objects. This is similar to the mechanisms of the human
visual systems that are able to implement multi-scale representation of a
visual scene simultaneously. Then, we propose a multi-resolution object
recognition framework rather than a single-resolution network. The proposed
framework is evaluated on the PASCAL VOC2007 database. The experimental results
show the performance of our adapted multi-resolution Faster-RCNN framework
outperforms the single-resolution Faster-RCNN on input images with various
resolutions with an increase in the mean Average Precision (mAP) of 9.14%
across all resolutions and 1.2% on the full-spectrum images. Furthermore, the
proposed model yields robustness of the performance over a wide range of
spatial frequencies