利用多模态数据和联合学习探测城市火灾

Fire Pub Date : 2024-03-22 DOI:10.3390/fire7040104
Ashutosh Sharma, Raj Kumar, I. Kansal, Renu Popli, Vikas Khullar, Jyoti Verma, Sunil Kumar
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引用次数: 0

摘要

火灾化学传感在室内火灾探测中发挥着至关重要的作用,因为它可以先于烟雾颗粒探测到化学挥发物,为早期火灾探测提供更快、更可靠的方法。本文使用一台热像仪和七个不同的火灾探测传感器同时获取多模式火灾数据。低成本传感器通常灵敏度和可靠性较低,无法探测到更远距离的火情。为了突破仅使用传感器识别火情的限制,多模态数据集的收集使用了可探测温度变化的热像仪。建议的管道使用热像仪的图像数据来训练卷积神经网络(CNN)及其多种版本。传感器数据(来自火灾传感器)的训练使用了双向长短记忆(BiLSTM-Dense)和密集长短记忆(LSTM-DenseDenseNet201),两个数据集的合并展示了多模态数据的性能。研究人员和系统开发人员可以利用该数据集创建和完善尖端的人工智能模型和系统。对图像数据集的初步评估显示,densenet201 是验证参数最高的最佳方法(分别为 0.99、0.99、0.99 和 0.08),即准确度、精确度、召回率和损失率。不过,传感器数据集也显示出 BILSTM-Dense 方法的最高参数(0.95、0.95、0.95、0.14)。在多模态数据方法中,使用多模态算法(densenet201 用于图像数据,Bi LSTM- Dense 用于传感器数据)部署的图像和传感器数据集显示了其他参数(1.0, 1.0, 1.0, 0.06)。这项工作表明,与传统的深度学习方法相比,联合学习(FL)方法可以在不显著牺牲准确性和其他验证参数的情况下,执行受隐私保护的火灾泄漏分类。
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Fire Detection in Urban Areas Using Multimodal Data and Federated Learning
Fire chemical sensing for indoor detection of fire plays an essential role because it can detect chemical volatiles before smoke particles, providing a faster and more reliable method for early fire detection. A thermal imaging camera and seven distinct fire-detecting sensors were used simultaneously to acquire the multimodal fire data that is the subject of this paper. The low-cost sensors typically have lower sensitivity and reliability, making it impossible for them to detect fire at greater distances. To go beyond the limitation of using solely sensors for identifying fire, the multimodal dataset is collected using a thermal camera that can detect temperature changes. The proposed pipeline uses image data from thermal cameras to train convolutional neural networks (CNNs) and their many versions. The training of sensors data (from fire sensors) uses bidirectional long-short memory (BiLSTM-Dense) and dense and long-short memory (LSTM-DenseDenseNet201), and the merging of both datasets demonstrates the performance of multimodal data. Researchers and system developers can use the dataset to create and hone cutting-edge artificial intelligence models and systems. Initial evaluation of the image dataset has shown densenet201 as the best approach with the highest validation parameters (0.99, 0.99, 0.99, and 0.08), i.e., Accuracy, Precision, Recall, and Loss, respectively. However, the sensors dataset has also shown the highest parameters with the BILSTM-Dense approach (0.95, 0.95, 0.95, 0.14). In a multimodal data approach, image and sensors deployed with a multimodal algorithm (densenet201 for image data and Bi LSTM- Dense for Sensors Data) has shown other parameters (1.0, 1.0, 1.0, 0.06). This work demonstrates that, in comparison to the conventional deep learning approach, the federated learning (FL) approach performs privacy-protected fire leakage classification without significantly sacrificing accuracy and other validation parameters.
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