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HW/SW Co-design and FPGA Acceleration of a Feature-Based Visual Odometry

机译:HW / SW Co-Design和FPGA加速基于特征的视觉测量法

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In the field of visual odometry (VO) or SLAM, deriving camera poses from image features is the basic issue. Even though feature-based VO or SLAM are more efficient than non-feature-based methods, they are still unfortunately computationally demanding. This paper addresses the concerns of computational efficiency, computational resources and power-consumption problem of a VO algorithm by designing a hardware-software (HW/SW) co-design architecture for the implementation on a field-programmable gate array (FPGA) and a Nios II CPU. Given images from Nios II, features are extracted and matched by SIFT and linear exhausted search (LES) algorithms via hardware. The design of LES module is improved so that the speed is accelerated compared to our previous work. Subsequently, camera poses are estimated using an ICP algorithm, where the derivation of nearest orthogonal matrix is achieved by integrating Denman-Beavers (DB) approach and Taylor approximation method. As such, the required hardware resources are lesser. After hardware computations, the results are then transferred back to Nios II. To show the effectiveness of the proposed approach, experiments using KITTI dataset are conducted. The results show that, taking the advantages of efficient computation of hardware, the computational time is greatly reduced, compared to a full-software implementation. Moreover, usage of hardware resources are also lesser than existing methods.
机译:在视野中(VO)或SLAM的领域,从图像功能中导出相机姿势是基本问题。尽管基于特征的VO或SLAM比基于非特征的方法更有效,但它们仍然仍然需要计算地要求。本文通过设计用于现场可编程门阵列(FPGA)和A的实现的硬件 - 软件(HW / SW)协同设计架构来解决VO算法的计算效率,计算资源和功耗问题的担忧。 Nios II CPU。来自NIOS II的给定图像,通过SEIFT和线性耗尽搜索(LES)算法通过硬件提取和匹配特征。 LES模块的设计得到改善,因此与我们之前的工作相比,速度加速。随后,使用ICP算法估计相机姿势,其中通过集成Denman-Bevers(DB)方法和泰勒近似方法来实现最近正交矩阵的推导。因此,所需的硬件资源较小。硬件计算后,然后将结果转回Nios II。为了表明所提出的方法的有效性,进行了使用基蒂数据集的实验。结果表明,与硬件的有效计算的优点,与全软件实现相比,计算时间大大降低。此外,硬件资源的使用量也比现有方法更小。

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