Business Need
Wildfires pose a devastating threat, but for Computer Science and IT engineers, they present a unique opportunity. Imagine using your skills to analyze images from pole-mounted cameras, not just for technical prowess, but to detect sparks, leaning trees, or damaged equipment – early signs of potential wildfires. This is the power of Computer Vision. Your AI models can trigger faster response times, potentially saving lives and property. Data-driven insights can even predict high-risk areas, optimizing resource allocation for prevention.
Let’s understand the business need more closely:
- Every year billions of dollars are lost in property damages by wildfires caused by sparks in electric poles posted in the wild .
- Utility companies face significant challenges in manually inspecting and maintaining numerous poles, especially those in remote areas.
- Logistical difficulties of manual inspection and maintenance adds on to the cost of maintenance of these electric poles
Computer Vision Approach
- Computer Vision Training:
Utilize advanced computer vision techniques to train models in recognizing various faults in electric poles. - Deep Learning Model:
Develop a Deep Learning-based image recognition model, adept at pinpointing fault components in electric poles. - Lightweight Model Design:
Ensure the model’s compatibility with mobile devices and drones, focusing on lightweight and efficient operation. - Real-Time Detection:
Enable real-time fault detection, offering immediate insights during inspections. - Cost Reduction and Efficiency:
Dramatically cut down on manual inspection costs and time, enhancing overall efficiency and safety.