AOA based Masked Region-CNN model for Detection of Parking Space in IoT Environment

Sri Vijaya K, Gokula Krishnan V, Arul Kumar D, Prathusha Laxmi B, Yasaswi B
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Abstract

Uneven illumination has a significant impact on vision-based automatic parking systems, making it impossible to conduct a correct assessment of parking places in the presence of complicated picture data. In to address this issue, this work provides a deep learning-based system for visual recognition of parking spaces and picture processing. Artificial intelligence (AI) approaches can be used to identify a less expensive and easier-to-implement solution to the parking spot identification challenge, especially since the discipline of deep learning is reshaping the world. Using deep learning techniques, this study offers a dynamic, straightforward, and cost-effective algorithm for the detection of parking spots. In order to determine which parking spots are available and which are occupied, this method employs a Masked Region Based Convolutional Neural Network (MR-CNN) and the intersection over union approach. Cars in the training dataset were spaced more apart than those actually seen, which increased the accuracy of the identification between cars and parking spots. The AOA mechanism enhances the model's ability to focus on relevant regions within an image, improving accuracy in detecting parking spaces. This leads to precise identification of parking slots, reducing false positives and negatives. The sequence and quantity of parking spots, as well as the capacity to predict empty spots, were tested in a case study and found to be accurate. In the experimental results as the AOA based MR-CNN model stretched the accuracy as 98.50 and the recall value as 40.59 then the precision as 96.34 F1-measure as 57.95 correspondingly.
基于 AOA 的屏蔽区域-CNN 模型用于检测物联网环境中的停车空间
不均匀的光照对基于视觉的自动泊车系统有很大影响,使其无法在复杂的图片数据面前对停车位进行正确评估。为了解决这一问题,本作品提供了一种基于深度学习的停车位视觉识别和图片处理系统。人工智能(AI)方法可用于确定一种成本更低、更易于实施的解决方案,以应对停车位识别挑战,特别是因为深度学习学科正在重塑世界。本研究利用深度学习技术,为检测停车点提供了一种动态、直接、经济高效的算法。为了确定哪些停车位是可用的,哪些是被占用的,该方法采用了基于掩码区域的卷积神经网络(MR-CNN)和交叉联合方法。训练数据集中的汽车间距比实际看到的汽车间距更大,从而提高了汽车和停车位之间识别的准确性。AOA 机制增强了模型聚焦图像内相关区域的能力,提高了检测停车位的准确性。这样就能精确识别停车位,减少误报和漏报。在一项案例研究中,对停车位的顺序和数量以及预测空车位的能力进行了测试,结果表明这些都是准确的。在实验结果中,基于 AOA 的 MR-CNN 模型的准确度为 98.50,召回值为 40.59,精确度为 96.34,F1-measure 为 57.95。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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