Smart Rail Sentinel: Enhancing Safety Through Crack Detection
Nikhitha Duriseti, Asritha Divine Buddha, Nikhil Dunna, Ball Mukund Mani Tripathi
- 发表年份
- 2024
- 引用次数
- 3
摘要
With one of the biggest railway networks in the world, Indian Railways offers the most significant public transportation option in the nation, which is also the most widely used and reasonably priced long-distance transportation system. Finding structural fissures in a railway analysis is the primary challenge. If these flaws are not fixed quickly, they could cause several derailments with a significant loss of life and property. This paper introduces a project that uses an IR SENSOR assembly system to design a resilient railway crack detection scheme (RRCDS) that detects cracks in railway tracks in order to prevent train accidents. The robotic model has a built-in camera that can broadcast images and live-streamed videos. live-streamed videos. Additionally capable of sending location data via a GPS module and sending SMS messages to the authorities informing them of the situation. Furthermore, a deep learning model continuously examines the photos and movies that the camera module sends to make sure there are no cracks. The model notifies the authorities in the event of a crack. This two-step verification process for detecting cracks would prevent an undesired rail track discontinuity, saving numerous trains in India.
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