Authors:
Weimin Tan; Bo Yan; Chuming Lin
Publication:
This paper is included in the IEEE Transactions on Circuits and Systems for Video Technology, Volume: 28, Issue: 11, Page(s): 3154-3162, November 2018.
Abstract:
The popularity of mobile applications has greatly enriched and facilitated our lives. However, the rapid increase of digital images and the problem of narrow bandwidth of the wireless network call for an appropriate approach to reduce the amount of data transmitted over the wireless network (i.e., low bit-rate transmission) while ensuring high recognition accuracy at the cloud. We propose a simple and effective feature retargeting (FR) approach for retargeting an image while preserving the representative local features (e.g., SIFT, SURF, and BRIEF) in the image. Our feature retargeting approach aims at low bit-rate visual recognition instead of high-quality visual perception that visual retargeting methods dedicate to. Our algorithm consists of two key novelties: estimating feature saliency and retargeting image: Estimating feature saliency focuses on predicting the relative importance of different features in an image by analyzing uniqueness in a specific context; Retargeting image aims at finding the optimal resolution for the retargeted image to maximize feature-saliency energy. We evaluate the proposed approach for two different applications in three large data sets and observe that our FR approach consistently outperforms state-of-the-art retargeting algorithms, resulting in both higher precision and lower bit-rates. We also demonstrate that even when the resolution of source image is reduced greatly, e.g., 1/7 original size, our algorithm produces superior results as compared with other approaches.