Beschreibung
Cranes are used worldwide for transportation and material handling in a variety of industries and facilities, including manufacturing industries, shipyards, and warehouses. Safety and efficiency in crane operations are a concern, since these issues are closely related to productivity. One of the reasons for crane-related accidents is mistakes by the operator, some of which can be attributed to the limitations of the operators field of view, depth perception, and knowledge of the workspace. These limitations are exacerbated by the dynamic environment of the workspace. One possible solution to these problems could be aiding the operator with a dynamic map of the workspace that shows the position of obstacles within it. In this book, two methods for mapping the crane workspace in near-realtime using computer vision are introduced. Several computer vision algorithms are integrated, and new techniques are introduced to generate a machine-vision-based map. A QR code-based mapping algorithm is also formulated. The algorithms can work independently. However, they can also be integrated, and the results show that a combination of these two mapping techniques produce the best results.
Autorenportrait
Mohammad Sazzad Rahman was born in Chittagong, Bangladesh. He received his Bachelors degree in Mechanical Engineering from Bangladesh University of Engineering and Technology, Dhaka, and his Masters from University of Louisiana at Lafayette. He currently lives in Michigan, United States and works in the automotive industry.