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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Object detection in real time based on improved single shot multi-box detector algorithm
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Object detection in real time based on improved single shot multi-box detector algorithm

机译:基于改进的单次多箱探测器算法的实时对象检测

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In today’s scenario, the fastest algorithm which uses a single layer of convolutional network to detect the objects from the image is single shot multi-box detector (SSD) algorithm. This paper studies object detection techniques to detect objects in real time on any device running the proposed model in any environment. In this paper, we have increased the classification accuracy of detecting objects by improving the SSD algorithm while keeping the speed constant. These improvements have been done in their convolutional layers, by using depth-wise separable convolution along with spatial separable convolutions generally called multilayer convolutional neural networks. The proposed method uses these multilayer convolutional neural networks to develop a system model which consists of multilayers to classify the given objects into any of the defined classes. The schemes then use multiple images and detect the objects from these images, labeling them with their respective class label. To speed up the computational performance, the proposed algorithm is applied along with the multilayer convolutional neural network which uses a larger number of default boxes and results in more accurate detection. The accuracy in detecting the objects is checked by different parameters such as loss function, frames per second (FPS), mean average precision (mAP), and aspect ratio. Experimental results confirm that our proposed improved SSD algorithm has high accuracy.
机译:在当今的情景中,使用单层卷积网络来检测来自图像的对象的最快算法是单次射击多箱检测器(SSD)算法。本文研究了对象检测技术,以实时检测对象在任何环境中运行所提出的模型的任何设备。在本文中,我们通过改进SSD算法来提高检测物体的分类精度,同时保持速度常数。通过使用深度明智的可分离卷积以及通常称为多层卷积神经网络的空间可分离卷积,这些改进已经在卷积层中完成。该方法使用这些多层卷积神经网络来开发一个系统模型,该系统模型包括多层,将给定对象分类为任何定义的类。然后,方案使用多个图像并检测来自这些图像的对象,用它们各自的类标签标记它们。为了加快计算性能,所提出的算法与多层卷积神经网络一起应用,该神经网络使用了更多默认框,并导致更准确的检测。通过不同的参数检测对象的准确性,例如损耗函数,每秒帧(FPS),平均精度(MAP)和纵横比。实验结果证实,我们提出的改进SSD算法具有高精度。

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