Abstract

BackgroundIn this paper we present a novel scene retargeting technique to reduce the visual scene while maintaining the size of the key features. The algorithm is scalable to implementation onto portable devices, and thus, has potential for augmented reality systems to provide visual support for those with tunnel vision. We therefore test the efficacy of our algorithm on shrinking the visual scene into the remaining field of view for those patients.MethodsSimple spatial compression of visual scenes makes objects appear further away. We have therefore developed an algorithm which removes low importance information, maintaining the size of the significant features. Previous approaches in this field have included seam carving, which removes low importance seams from the scene, and shrinkability which dynamically shrinks the scene according to a generated importance map. The former method causes significant artifacts and the latter is inefficient. In this work we have developed a new algorithm, combining the best aspects of both these two previous methods. In particular, our approach is to generate a shrinkability importance map using as seam based approach. We then use it to dynamically shrink the scene in similar fashion to the shrinkability method. Importantly, we have implemented it so that it can be used in real time without prior knowledge of future frames.ResultsWe have evaluated and compared our algorithm to the seam carving and image shrinkability approaches from a content preservation perspective and a compression quality perspective. Also our technique has been evaluated and tested on a trial included 20 participants with simulated tunnel vision. Results show the robustness of our method at reducing scenes up to 50% with minimal distortion. We also demonstrate efficacy in its use for those with simulated tunnel vision of 22 degrees of field of view or less.ConclusionsOur approach allows us to perform content aware video resizing in real time using only information from previous frames to avoid jitter. Also our method has a great benefit over the ordinary resizing method and even over other image retargeting methods. We show that the benefit derived from this algorithm is significant to patients with fields of view 20° or less.

Highlights

  • In this paper we present a novel scene retargeting technique to reduce the visual scene while maintaining the size of the key features

  • The low vision pathologies of this latter group can be divided mainly into two categories; those that predominantly suffer from a loss of visual acuity such as Macular Degeneration (MD), and those that predominantly suffer from a reduction in the overall visual field, such as Retinitis Pigmentosa (RP)

  • RP in particular causes a tunnel vision with decreasing peripheral fields as the condition progresses. For those with central visual impairment, conventional low vision aids (LVAs) can provide magnification in order to compensate for reduced visual acuity

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Summary

Introduction

In this paper we present a novel scene retargeting technique to reduce the visual scene while maintaining the size of the key features. There are more than 124 million people who have severely impaired vision. RP in particular (population prevalence ~1:4000 [2]) causes a tunnel vision with decreasing peripheral fields as the condition progresses. For those with central visual impairment, conventional low vision aids (LVAs) can provide magnification in order to compensate for reduced visual acuity. Electronically enhanced visual aids have been proposed which offer a number of distinct advantages over conventional LVAs by enhancing the contrast without the need of image magnification [3,4,5,6]

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