E3S Web of Conferences (Jan 2023)

Real-time debris flow detection using deep convolutional neural network and Jetson Nano

  • Pham Minh-Vuong,
  • Song Chang-Ho,
  • Nguyen Thanh-Nhan,
  • Lee Ji-Sung,
  • Kim Yun-Tae

DOI
https://doi.org/10.1051/e3sconf/202341503021
Journal volume & issue
Vol. 415
p. 03021

Abstract

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This study aims to develop a potential system for real-time detection of debris flow motion using a deep convolutional neural network (CNN) and image processing techniques. A system consisting of a pre-trained CNN model, NVIDIA Jetson Nano, and a camera was used to identify debris flow movement. The pre-trained CNN model was trained on an image dataset derived from 12 debris flow videos obtained from small flume tests, large flume tests, and several debris flow events. The application results of the proposed system on the flume test in the laboratory reached an F1 score of 72.6 to 100%. The real-time processing speed of the CNN model achieved from 2 to 21 frames per second (FPS) on the Jetson Nano. Both the accuracy and the processing speed of CNN model depend on the size of the video input and the input size of the model CNN. The CNN model of 320 × 320 pixels with a resolution of 800 × 480 pixels gives accuracy (F1 = 99.2%) and processing speed (FPS = 20) considered the optimal model when running the Jetson Nano device; thus, it can be applied for early detection and warning systems.