In this study, the creation of a database consisting of images obtained as a result of deformation in the images recorded by these cameras by injecting faults into the robot camera nodes and alternative uses of this database are explained. The study is based on an existing camera fault injection software that injects faults into the cameras of a working robot and collects the normal and faulty images recorded during this injection. The database obtained in the study is a source for the detection of anomalies that may occur in robotic systems. Within the scope of this study, a database of 10000 images consisting of 5000 normal and 5000 faulty images was created. Faulty images were obtained by injecting seven different types of image faults, namely erosion, dilation, opening, closing, gradient, motionblur and partialloss, at different times while the robot was operating.
翻译:在这项研究中,通过向机器人摄像机节点和该数据库的替代用途注入断层,创建了一个数据库,由这些照相机所录图像变形后获得的图像组成,该数据库的创建得到了解释,其基础是现有的照相机错入一个工作机器人的相机,并收集了注射过程中记录的正常和错误的图像。研究中获取的数据库是探测机器人系统中可能发生的异常现象的一个来源。在本研究范围内,创建了一个由5000个正常和5000个错乱图像组成的10000个图像数据库。通过在机器人操作期间的不同时间,通过注射七种不同的图像错误,即侵蚀、放大、开关、关闭、梯度、运动布尔和部分损耗,获得了失灵图像。