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Study on the Evaluation Method of Sound Phase Cloud Maps Based on an Improved YOLOv4 Algorithm

机译:基于改进的yolov4算法的声际云映射评价方法研究

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摘要

Most sound imaging instruments are currently used as measurement tools which can provide quantitative data, however, a uniform method to directly and comprehensively evaluate the results of combining acoustic and optical images is not available. Therefore, in this study, we define a localization error index for sound imaging instruments, and propose an acoustic phase cloud map evaluation method based on an improved YOLOv4 algorithm to directly and objectively evaluate the sound source localization results of a sound imaging instrument. The evaluation method begins with the image augmentation of acoustic phase cloud maps obtained from the different tests of a sound imaging instrument to produce the dataset required for training the convolutional network. Subsequently, we combine DenseNet with existing clustering algorithms to improve the YOLOv4 algorithm to train the neural network for easier feature extraction. The trained neural network is then used to localize the target sound source and its pseudo-color map in the acoustic phase cloud map to obtain a pixel-level localization error. Finally, a standard chessboard grid is used to obtain the proportional relationship between the size of the acoustic phase cloud map and the actual physical space distance; then, the true lateral and longitudinal positioning error of sound imaging instrument can be obtained. Experimental results show that the mean average precision of the improved YOLOv4 algorithm in acoustic phase cloud map detection is 96.3%, the F1-score is 95.2%, and detection speed is up to 34.6 fps. The improved algorithm can rapidly and accurately determine the positioning error of sound imaging instrument, which can be used to analyze and evaluate the positioning performance of sound imaging instrument.
机译:大多数声音成像仪器目前用作可以提供定量数据的测量工具,然而,直接和全面地评估组合声学和光学图像的结果的统一方法。因此,在本研究中,我们定义了声音成像仪器的本地化误差索引,并提出了一种基于改进的yolov4算法的声学相位云图评估方法直接和客观地评估声音成像仪器的声源定位结果。评估方法开始于从声音成像仪器的不同测试获得的声相云映射的图像增强,以产生训练卷积网络所需的数据集。随后,我们将DENSENET与现有聚类算法组合以改善YOLOV4算法训练神经网络以更轻松的特征提取。然后,培训的神经网络用于本地化在声云映射中的目标声源及其伪彩色映射,以获得像素级定位误差。最后,使用标准棋盘网格来获得声学相云图的大小与实际物理空间距离之间的比例关系;然后,可以获得声音成像器械的真正横向和纵向定位误差。实验结果表明,声学相云映射检测中改进的yolov4算法的平均平均精度为96.3%,F1分数为95.2%,检测速度高达34.6 fps。改进的算法可以快速准确地确定声音成像仪的定位误差,可用于分析和评估声音成像仪的定位性能。

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