一种用于精确实时视差图估计的硬件高效架构

Christos Ttofis, C. Kyrkou, T. Theocharides
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引用次数: 13

摘要

新兴的嵌入式视觉系统利用视差估计作为一种手段来感知深度信息,以智能地与宿主环境交互并采取适当的行动。这样的系统需要高处理性能和准确的深度感知,同时需要低能耗,特别是在处理移动和嵌入式应用时,如机器人、导航和安全。大多数视差估计系统的实时专用硬件实现都采用依赖于简单的成本聚合策略的局部算法,具有固定和矩形的相关窗口。然而,这种算法通常在深度边界和低纹理区域存在明显的模糊性。为此,本文提出了一种视差估计系统的硬件架构,该系统在精度和速度上都具有良好的性能。该体系结构实现了一种自适应的支持权立体对应算法,该算法集成了图像分割信息,试图增加匹配过程的鲁棒性。本文还介绍了面向硬件的算法修改/优化技术,使算法对硬件友好,适合于高效的专用硬件实现。与文献的比较表明,就每秒百万视差估计(MDE/s)而言,所提出架构的FPGA实现是最快的实现之一,并且总体精度为90.21%,它提出了有效的处理速度/视差映射精度权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hardware-Efficient Architecture for Accurate Real-Time Disparity Map Estimation
Emerging embedded vision systems utilize disparity estimation as a means to perceive depth information to intelligently interact with their host environment and take appropriate actions. Such systems demand high processing performance and accurate depth perception while requiring low energy consumption, especially when dealing with mobile and embedded applications, such as robotics, navigation, and security. The majority of real-time dedicated hardware implementations of disparity estimation systems have adopted local algorithms relying on simple cost aggregation strategies with fixed and rectangular correlation windows. However, such algorithms generally suffer from significant ambiguity along depth borders and areas with low texture. To this end, this article presents the hardware architecture of a disparity estimation system that enables good performance in both accuracy and speed. The architecture implements an adaptive support weight stereo correspondence algorithm that integrates image segmentation information in an attempt to increase the robustness of the matching process. The article also presents hardware-oriented algorithmic modifications/optimization techniques that make the algorithm hardware-friendly and suitable for efficient dedicated hardware implementation. A comparison to the literature asserts that an FPGA implementation of the proposed architecture is among the fastest implementations in terms of million disparity estimations per second (MDE/s), and with an overall accuracy of 90.21%, it presents an effective processing speed/disparity map accuracy trade-off.
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