Skripsi
IMPLEMENTASI DETEKSI OBJEK PADA HUMANOID ROBOT BERBASIS ALGORITMA YOU ONLY LOOK ONCE (YOLO)
Nowadays, the research in robots has grown fast. Even robots can have constructions that resemble humans, including interacting with the surrounding environment. The robot can perform this interaction through a camera that can process visual input to recognize objects around it. However, the current object recognition method has not been implemented in real-time on humanoid robots. Thus, this study developed a system that can detect various objects surrounding a humanoid robot using the You Only Look Once (YOLO) algorithm. In this study, the objects detected by the humanoid robot consisted of 12 classes, namely humans, chairs, tables, cabinets, computers, books, doors, bottles, eggs, learning modules, cups, and hands. The object dataset used in this study is primary data taken at the Robotics and Control Engineering laboratory. Each object class consist of 1500 data. 2 types of YOLO architecture were used in this research, namely Tiny YOLOv3 and Tiny YOLOv4. This aims to see the performance of the two architectures in detecting objects around the robot. The results showed that the Tiny YOLOv4 model had better performance than the Tiny YOLOv3. The detection accuracy in the simulation experiment obtained was 74,16%. Then, the accuracy in real-time conditions was 61,66% for bright and 38,33% for dim condition. It showed that Tiny YOLOv4 has a good performance on object detection systems around humanoid robots, especially for bright condition. The system built also sent data information in the form of class, distance, and object position used by robots to interact with humans.
Inventory Code | Barcode | Call Number | Location | Status |
---|---|---|---|---|
2207003276 | T72888 | T728882022 | Central Library (Referens) | Available |
No other version available