Manipulation of Camera Sensor Data via Fault Injection for Anomaly Detection Studies in Verification and Validation Activities For AI

08/31/2021
by   Alim Kerem Erdogmuş, et al.
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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 errors into the robot camera nodes and the 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 the ROKOS robot arms while the system is running and collects the normal and faulty images recorded during this injection. The database obtained in the study is a source for detecting anomalies that may occur in robotic systems. The ROKOS system has been developed on the inspection of the parts in a bus body-in-white with the help of the cameras on the ROKOS robot arms, right and left. The simulation-based robot verification testing tool (SRVT) system is a system that has emerged by simulating these robots and the chassis in the Gazebo environment, performing and implementing the trajectory planning with the MoveIt planner, and integrating the ROS Smach structure and mission communication. This system is being developed within the scope of the VALU3S project to create a V V system in the robotics field. Within the scope of this study, a database of 10000 images was created, consisting of 5000 normal and 5000 faulty images. Faulty pictures were obtained by injecting seven different image fault types, including erosion, dilusion, opening, closing, gradient, motion-blur and partial loss, at different times when the robot was in operation. This database consists of images taken by the ROKOS system from the vehicle during a bus chassis inspection mission.

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