This paper presents a deep-learned facial recognition method for underwater robots to identify scuba divers. Specifically, the proposed method is able to recognize divers underwater with faces heavily obscured by scuba masks and breathing apparatus. Our contribution in this research is towards robust facial identification of individuals under significant occlusion of facial features and image degradation from underwater optical distortions. With the ability to correctly recognize divers, autonomous underwater vehicles (AUV) will be able to engage in collaborative tasks with the correct person in human-robot teams and ensure that instructions are accepted from only those authorized to command the robots. We demonstrate that our proposed framework is able to learn discriminative features from real-world diver faces through different data augmentation and generation techniques. Experimental evaluations show that this framework achieves a 3-fold increase in prediction accuracy compared to the state-of-the-art (SOTA) algorithms and is well-suited for embedded inference on robotic platforms.
翻译:本文介绍了水下机器人识别潜水潜水员的深层面部识别方法。 具体而言,拟议方法能够识别水下潜水员,其面孔被潜水面具和呼吸器严重遮蔽。我们在这一研究中的贡献是,对面部特征被严重隔离的个人进行强有力的面部识别,使图像从水下光学扭曲中退化。如果能够正确识别潜水员,自主潜水器(AUV)将能够与人类机器人团队中正确的人合作,确保只接受有权指挥机器人的人的指示。我们证明,我们拟议的框架能够通过不同的数据增强和生成技术,从真实世界潜水员脸上学习有区别的特征。实验性评估表明,这一框架与最新工艺(SOTA)算法相比,预测准确度增加了3倍,并且非常适合机器人平台上嵌入的推断。