Departamento Tecnologia Electronica, ETSI Telecomunicacion, University of Málaga, 29071 Málaga, Spain.
Sensors (Basel). 2023 Aug 29;23(17):7491. doi: 10.3390/s23177491.
One of the main challenges faced by iris recognition systems is to be able to work with people in motion, where the sensor is at an increasing distance (more than 1 m) from the person. The ultimate goal is to make the system less and less intrusive and require less cooperation from the person. When this scenario is implemented using a single static sensor, it will be necessary for the sensor to have a wide field of view and for the system to process a large number of frames per second (fps). In such a scenario, many of the captured eye images will not have adequate quality (contrast or resolution). This paper describes the implementation in an MPSoC (multiprocessor system-on-chip) of an eye image detection system that integrates, in the programmable logic (PL) part, a functional block to evaluate the level of defocus blur of the captured images. In this way, the system will be able to discard images that do not have the required focus quality in the subsequent processing steps. The proposals were successfully designed using Vitis High Level Synthesis (VHLS) and integrated into an eye detection framework capable of processing over 57 fps working with a 16 Mpixel sensor. Using, for validation, an extended version of the CASIA-Iris-distance V4 database, the experimental evaluation shows that the proposed framework is able to successfully discard unfocused eye images. But what is more relevant is that, in a real implementation, this proposal allows discarding up to 97% of out-of-focus eye images, which will not have to be processed by the segmentation and normalised iris pattern extraction blocks.
虹膜识别系统面临的主要挑战之一是能够处理处于运动中的人员,此时传感器与人员的距离逐渐增大(超过 1 米)。最终目标是使系统的侵入性越来越小,并且对人员的配合要求越来越低。当使用单个静态传感器实现这种场景时,传感器需要具有较宽的视场,并且系统需要每秒处理大量帧数(fps)。在这种情况下,许多捕获的眼部图像的质量(对比度或分辨率)将不够高。本文在 MPSoC(多核系统芯片)中实现了一种眼部图像检测系统,该系统在可编程逻辑(PL)部分集成了一个功能块,用于评估捕获图像的散焦模糊程度。这样,系统将能够在后续处理步骤中丢弃不具有所需聚焦质量的图像。使用 Vitis 高级综合(VHLS)成功设计了这些提案,并将其集成到能够以 16 Mpixel 传感器处理超过 57 fps 的眼部检测框架中。使用 CASIA-Iris-distance V4 数据库的扩展版本进行验证,实验评估表明,所提出的框架能够成功地丢弃失焦的眼部图像。但更重要的是,在实际实现中,该提案允许丢弃高达 97%的失焦眼部图像,这些图像不必由分割和归一化虹膜模式提取块进行处理。