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Asynchronous event feature generation and tracking based on gradient descriptor for event cameras

机译:基于事件摄像机梯度描述符的异步事件特征生成和跟踪

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Recently, the event camera has become a popular and promising vision sensor in the research of simultaneous localization and mapping and computer vision owing to its advantages: low latency, high dynamic range, and high temporal resolution. As a basic part of the feature-based SLAM system, the feature tracking method using event cameras is still an open question. In this article, we present a novel asynchronous event feature generation and tracking algorithm operating directly on event-streams to fully utilize the natural asynchronism of event cameras. The proposed algorithm consists of an event-corner detection unit, a descriptor construction unit, and an event feature tracking unit. The event-corner detection unit addresses a fast and asynchronous corner detector to extract event-corners from event-streams. For the descriptor construction unit, we propose a novel asynchronous gradient descriptor inspired by the scale-invariant feature transform descriptor, which helps to achieve quantitative measurement of similarity between event feature pairs. The construction of the gradient descriptor can be decomposed into three stages: speed-invariant time surface maintenance and extraction, principal orientation calculation, and descriptor generation. The event feature tracking unit combines the constructed gradient descriptor and an event feature matching method to achieve asynchronous feature tracking. We implement the proposed algorithm in Ctt and evaluate it on a public event dataset. The experimental results show that our proposed method achieves improvement in terms of tracking accuracy and real-time performance when compared with the state-of-the-art asynchronous event-corner tracker and with no compromise on the feature tracking lifetime.
机译:最近,事件摄像机在同时定位和映射和计算机视觉上的优点中的研究中成为了一种流行和有希望的视觉传感器:低延迟,高动态范围和高时分辨率。作为基于特征的SLAM系统的基本部分,使用事件摄像机的特征跟踪方法仍然是一个打开的问题。在本文中,我们介绍了一种新颖的异步事件特征生成和跟踪算法,直接在事件流上操作,以充分利用事件摄像机的自然异步。所提出的算法包括事件角检测单元,描述符结构单元和事件特征跟踪单元组成。事件角检测单元地址播放快速和异步的角探测器,以从事件流中提取事件角。对于描述符构造单元,我们提出了一种由尺度不变特征变换描述符启发的新颖的异步梯度描述符,这有助于实现事件特征对之间的相似性的定量测量。梯度描述符的构造可以分解成三个阶段:速度不变的时间表面维护和提取,主取向计算和描述符生成。事件特征跟踪单元组合构建的渐变描述符和事件特征匹配方法来实现异步特征跟踪。我们在CTT中实现了所提出的算法,并在公共事件数据集中进行评估。实验结果表明,与最先进的异步事件转角跟踪器相比,我们所提出的方法在跟踪准确性和实时性能方面取得了改进,并且在特征跟踪寿命上没有妥协。

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