基于视觉识别的火花识别系统

Tianhao Cheng, Hao Hu, Hitoshi Kobayashi, H. Onoda
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摘要

随着人工智能的发展,图像识别得到了更广泛的应用。本文提出了一种新的范式图像识别系统,用于检测回收设施中锂离子电池压缩引起的火灾。该系统采用深度学习方法。提出了SparkEye系统,侧重于早期发现火灾火花,并与喷水灭火系统相结合,以最大限度地减少受影响设施的火灾损失。大约30,000张图像(分辨率,800 × 600像素)用于训练系统,以达到>90%的检测精度。为了满足回收设施的粉尘控制需求,该系统采用了空气和框架相机保护方法。根据测试数据和实际的工作场所反馈,SparkEye火灾探测器的最佳位置是破碎机,传送带和垃圾坑。
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Visual Identification-Based Spark Recognition System
With the development of artificial intelligence, image recognition has seen wider adoption. Here, a novel paradigm image recognition system is proposed for detection of fires owing to the compression of lithium-ion batteries at recycling facilities. The proposed system uses deep learning method. The SparkEye system is proposed, focusing on the early detection of fires as sparks, and is combined with a sprinkler system, to minimize fire-related losses at affected facilities. Approximately 30,000 images (resolution, 800 × 600 pixels) were used for training the system to >90% detection accuracy. To fulfil the demand for dust control at recycling facilities, air and frame camera protection methods were incorporated into the system. Based on the test data and realistic workplace feedback, the best placements of the SparkEye fire detectors were crushers, conveyors, and garbage pits.
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