论文标题
在挑战条件下的学生分割的一种实用方法
A practical method for pupil segmentation in challenging conditions
论文作者
论文摘要
已经提出了用于身份验证的各种方法,包括密码或图案图,这些方法在个人电子设备上清晰可见。但是,这些身份验证方法更加脆弱,因为密码和卡可以被遗忘,丢失或被盗。因此,使用基于物理和行为特征的生物特征识别方法在个人身份验证中产生了极大的好奇心,无法忘记或被盗。身份验证方法在便携式设备中广泛使用,因为电池的寿命和时间响应是这些设备中的重要问题。由于这些系统需要快速和低功率,因此设计有效的方法仍然至关重要。在本文中,我们根据近似计算提出了一种新的低功率和快速的学生分割方法,该计算在交易较小的准确性下,可以获得能力假设和时间节省的显着改善,并使此算法适用于硬件实现。此外,PSNR和SSIM的实验结果表明,此方法中的错误率可以忽略不计。
Various methods have been proposed for authentication, including password or pattern drawing, which is clearly visible on personal electronic devices. However, these methods of authentication are more vulnerable, as passwords and cards can be forgotten, lost, or stolen. Therefore, a great curiosity has developed in individual authentication using biometric methods that are based on physical and behavioral features not possible to forget or be stolen. Authentication methods are used widely in portable devices since the lifetime of battery and time response are essential concerns in these devices. Due to the fact that these systems need to be fast and low power, designing efficient methods is still critical. We, in this paper, proposed a new low power and fast method for pupil segmentation based on approximate computing that under trading a minor level of accuracy, significant improvement in power assumption and time saving can be obtained and makes this algorithm suitable for hardware implementation. Furthermore, the experimental results of PSNR and SSIM show that the error rate in this method is negligible.