FCM with Spatial Constraint Multi-Kernel Distance-Based Segmentation and Optimized Deep Learning for Flood Detection

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
R. V. Prasad, J. Prasad, B. Chaudhari, Nihar M. Ranjan, Rajat Srivastava
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引用次数: 0

Abstract

Floods are the deadly and catastrophic disasters, causing loss of life and harm to assets, farmland, and infrastructure. To address this, it is necessary to devise and employ an effective flood management system that can immediately identify flood areas to initiate relief measures as soon as possible. Therefore, this research work develops an effective flood detection method, named Anti- Corona-Shuffled Shepherd Optimization Algorithm-based Deep Quantum Neural Network (ACSSOA-based Deep QNN) for identifying the flooded areas. Here, the segmentation process is performed using Fuzzy C-Means with Spatial Constraint Multi-Kernel Distance (MKFCM_S) wherein the Fuzzy C-Means (FCM) is modified with Spatial Constraints Based on Kernel-Induced Distance (KFCM_S). For flood detection, Deep QNN has been used wherein the training progression of Deep QNN is done using designed optimization algorithm, called ACSSOA. Besides, the designed ACSSOA is newly formed by the hybridization of Anti Corona Virus Optimization (ACVO) and Shuffled Shepherd Optimization Algorithm (SSOA). The devised method was evaluated using the Kerala Floods database, and it acquires the segmentation accuracy, testing accuracy, sensitivity, and specificity with highest values of 0.904, 0.914, 0.927, and 0.920, respectively.
基于空间约束的多核距离分割和优化深度学习的FCM洪水检测
洪水是致命的灾难性灾害,会造成生命损失和财产、农田和基础设施的破坏。为了解决这个问题,有必要设计和采用一个有效的洪水管理系统,可以立即识别洪水区域,并尽快采取救援措施。因此,本研究开发了一种有效的洪水检测方法——基于反电晕洗牌牧羊人优化算法的深度量子神经网络(ACSSOA-based Deep Quantum Neural Network,简称Deep QNN)来识别洪水泛滥区域。在这里,使用空间约束多核距离模糊c均值(MKFCM_S)进行分割过程,其中模糊c均值(FCM)使用基于核诱导距离的空间约束(KFCM_S)进行修改。对于洪水检测,已经使用了深度QNN,其中深度QNN的训练过程是使用设计的优化算法ACSSOA完成的。此外,所设计的ACSSOA是由抗冠状病毒优化算法(ACVO)和shuffle Shepherd优化算法(SSOA)杂交而成的。利用喀拉拉邦洪水数据库对该方法进行了评价,结果表明,该方法的分割精度、检测精度、灵敏度和特异性最高,分别为0.904、0.914、0.927和0.920。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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