robocup international symposium
b-it-bots RoboCup@Work Team Description Paper 2023
Patel, Kevin, Kalagaturu, Vamsi, Mannava, Vivek, Selvaraju, Ravisankar, Shinde, Shubham, Bakaraniya, Dharmin, Nair, Deebul, Wasil, Mohammad, Thoduka, Santosh, Awaad, Iman, Schneider, Sven, Hochgeschwender, Nico, Plöger, Paul G.
This paper presents the b-it-bots RoboCup@Work team and its current hardware and functional architecture for the KUKA youBot robot. We describe the underlying software framework and the developed capabilities required for operating in industrial environments including features such as reliable and precise navigation, flexible manipulation, robust object recognition and task planning. New developments include an approach to grasp vertical objects, placement of objects by considering the empty space on a workstation, and the process of porting our code to ROS2.
xYOLO: A Model For Real-Time Object Detection In Humanoid Soccer On Low-End Hardware
Barry, Daniel, Shah, Munir, Keijsers, Merel, Khan, Humayun, Hopman, Banon
With the emergence of onboard vision processing for areas such as the internet of things (IoT), edge computing and autonomous robots, there is increasing demand for computationally efficient convolutional neural network (CNN) models to perform real-time object detection on resource constraints hardware devices. Tiny-YOLO is generally considered as one of the faster object detectors for low-end devices and is the basis for our work. Our experiments on this network have shown that Tiny-YOLO can achieve 0.14 frames per second(FPS) on the Raspberry Pi 3 B, which is too slow for soccer playing autonomous humanoid robots detecting goal and ball objects. In this paper we propose an adaptation to the YOLO CNN model named xYOLO, that can achieve object detection at a speed of 9.66 FPS on the Raspberry Pi 3 B. This is achieved by trading an acceptable amount of accuracy, making the network approximately 70 times faster than Tiny-YOLO. Greater inference speed-ups were also achieved on a desktop CPU and GPU. Additionally we contribute an annotated Darknet dataset for goal and ball detection.
- Oceania > New Zealand > South Island > Canterbury Region > Christchurch (0.04)
- Europe > Germany > North Rhine-Westphalia > Upper Bavaria > Munich (0.04)
- Leisure & Entertainment > Sports > Soccer (1.00)
- Information Technology (1.00)
RoboCup@Home — Benchmarking Domestic Service Robots
Wachsmuth, Sven (Bielefeld University) | Holz, Dirk (University of Bonn) | Rudinac, Maja (Delft University of Technology) | Ruiz-del-Solar, Javier (Universidad de Chile)
The RoboCup@Home league has been founded in 2006with the idea to drive research in AI and related fieldstowards autonomous and interactive robots that copewith real life tasks in supporting humans in everday life.The yearly competition format establishes benchmarkingas a continuous process with yearly changes insteadof a single challenge. We discuss the current state andfuture perspectives of this endeavor.
- South America > Chile (0.05)
- Europe > Netherlands > South Holland > Delft (0.05)
- Europe > Germany > Bremen > Bremen (0.05)