Augmented Reality System for Accelerometer Equipped Mobile Devices

Mateusz Skoczewski, H. Maekawa
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引用次数: 5

Abstract

In this paper, we present a novel approach for mobile augmented reality system. We estimate the 3D camera pose by detecting local invariant image features and combining them with the camera’s accelerometer data. We applied NELFD - Neuroevolved Local Feature Descriptor that encodes data around points of interest in the image using a neural network with evolved topology and weights. For every image frame, a correspondence between 2D feature points is calculated and the camera’s pose is established based on additional sensor information. Generally mobile systems are low performance and equipped with low-grade camera. Thus, due to estimation accuracy and low computational complexity our approach has been considered as a new alternative in the mobile augmenting process. Experimental evaluation proved that our method is capable of real-time pose tracking and augmentation in an unconstrained environment.
移动设备加速度计增强现实系统
本文提出了一种用于移动增强现实系统的新方法。我们通过检测局部不变图像特征并将其与相机的加速度计数据相结合来估计3D相机的姿态。我们应用了NELFD -神经进化的局部特征描述符,它使用具有进化拓扑和权重的神经网络对图像中感兴趣点周围的数据进行编码。对于每一帧图像,计算二维特征点之间的对应关系,并根据附加的传感器信息建立相机的姿态。一般来说,移动系统的性能较低,配备的相机档次也较低。因此,由于估计精度高和计算复杂度低,我们的方法被认为是移动增强过程中的一种新的替代方法。实验结果表明,该方法能够在无约束环境下进行实时姿态跟踪和增强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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