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Avoid Costly Vessel-Bridge Collisions in Logistics with Computer Vision

Introduction

The logistics industry is the backbone of global trade, responsible for the seamless movement of goods and materials across vast distances. However, the challenges of managing complex supply chains and monitoring maritime traffic can be daunting. This is where the power of computer vision comes into play, enabling the detection and tracking of vessels with unprecedented accuracy and efficiency.

Vessel detection is a critical component of logistics operations, providing real-time insights into the movement and status of ships transporting goods. Accurate vessel detection can help logistics managers optimize routes, reduce delays, and mitigate the risk of lost or damaged cargo.

Local vessel 

Source:https://www.hkmpb.gov.hk/en/local-vessels.html

Additionally, it can aid in the monitoring of port activities, asset management, and regulatory compliance. Detecting the height of vessels as they navigate waterways is also a critical component of logistics operations, particularly when it comes to preventing costly bridge collisions. 

Tall ships or vessels carrying oversized cargo can pose a significant threat to infrastructure if their height is not properly monitored and managed. Accurate vessel height detection can help logistics managers optimize routes, avoid delays, and mitigate the risk of damage to both cargo and public property. 

This is especially important in regions like Hong Kong, which is surrounded by the ocean and consists of many islands. Hong Kong has busy boat traffic as well as numerous bridges connecting the islands to allow people to travel between them, making vessel height detection a crucial consideration for logistics operations in the area.

Problem

While vessel height detection is a critical capability for logistics operations, it is not without its challenges. Environmental factors, such as weather conditions, can significantly impact the accuracy of height measurements. Heavy rain, fog, or choppy waters can make it difficult for computer vision systems to clearly define the vessel's outline and waterline, leading to potential errors in height calculations. 

Additionally, the load and distribution of goods on a vessel can affect its draft and overall height above the water, requiring advanced algorithms to account for these dynamic variables. Vessel type is another complicating factor, as different ship designs and cargo configurations may require specialized detection models. 

Our proposed solution

Recent advancements in computer vision technology have revolutionized the way the logistics industry approaches vessel detection. Cutting-edge algorithms, powered by deep learning and neural networks, can analyze satellite imagery, radar data, and other sensor inputs to identify and track vessels with remarkable precision.

Two primary computer vision methods are often employed for vessel detection: bounding box detection and instance segmentation.

Application 

Environmental conditions can significantly impact the quality and clarity of vessel images captured for detection and monitoring purposes. Vessel images may blur or obfuscated. To overcome these challenges, engaging some image preprocessing techniques is needed.

Common preprocessing methods used in this case are sharpening, contrast enhancement, and histogram equalization. The examples below demonstrate how these preprocessing steps can effectively transform a blurred vessel image into a sharper, more well-defined representation, improving the input quality for subsequent computer vision algorithms.

One of the most popular and effective computer vision models for object detection is YOLO (You Only Look Once). YOLO is a real-time object detection system that uses a single neural network to predict bounding boxes and class probabilities directly from full images in a single evaluation.  The latest version, YOLOv8, is train with dataset of over 200,000 images labeled with more than 80 object categories.  YOLOv8 combines bounding box detection and instance segmentation, allowing for the precise identification and tracking of vessels in maritime environments.

As the global logistics industry continues to evolve, the role of computer vision in vessel height detection will become increasingly crucial. By harnessing the power of this advanced technology, logistics companies can enhance their operational efficiency, reduce costs, and deliver superior customer service.

Take the example of using computer vision solution to continuously monitoring the height of vessels as they navigated the waterways, quickly identifying any ships that posed a risk of colliding with nearby bridges and taking immediate steps to reroute or adjust the cargo load. The solution can significantly reduce in bridge strike incidents by proactively identification of potential bridge collision risks.


Cover image source: By mageba sa (wahrscheinlich Benutzer:Mageba) - Own work (Original text: selbst erstellt), GFDL, https://commons.wikimedia.org/w/index.php?curid=10549127

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