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EAWNet: An Edge Attention-Wise Objector for Real-Time Visual Internet of Things

机译:eawnet:用于实时视觉互联网的边缘注意力

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With the upgrading of the high-performance image processing platform and visual internet of things sensors, VIOT is widely used in intelligent transportation, autopilot, military reconnaissance, public safety, and other fields. However, the outdoor visual internet of things system is very sensitive to the weather and unbalanced scale of latent object. The performance of supervised learning is often limited by the disturbance of abnormal data. It is difficult to collect all classes from limited historical instances. Therefore, in terms of the anomaly detection images, fast and accurate artificial intelligence-based object detection technology has become a research hot spot in the field of intelligent vision internet of things. To this end, we propose an efficient and accurate deep learning framework for real-time and dense object detection in VIOT named the Edge Attention-wise Convolutional Neural Network (EAWNet) with three main features. First, it can identify remote aerial and daily scenery objects fast and accurately in terms of an unbalanced category. Second, edge prior and rotated anchor are adopted to enhance the efficiency of detection in edge computing internet. Third, our EAWNet network uses an edge sensing object structure, makes full use of an attention mechanism to dynamically screen different kinds of objects, and performs target recognition on multiple scales. The edge recovery effect and target detection performance for long-distance aerial objects were significantly improved. We explore the efficiency of various architectures and fine tune the training process using various backbone and data enhancement strategies to increase the variety of the training data and overcome the size limitation of input images. Extensive experiments and comprehensive evaluation on COCO and large-scale DOTA datasets proved the effectiveness of this framework that achieved the most advanced performance in real-time VIOT object detection.
机译:随着高性能图像处理平台和视觉互联网传感器的升级,免疫因运是广泛应用于智能运输,自动驾驶仪,军事侦察,公共安全和其他领域。然而,室外视觉互联网系统对潜在物体的天气和不平衡规模非常敏感。监督学习的表现通常受到异常数据的干扰的限制。很难从有限的历史实例收集所有课程。因此,就异常检测图像而言,快速准确的基于人工智能的物体检测技术已成为智能视觉互联网领域的研究热点。为此,我们提出了一种高效准确的深度学习框架,用于目的地的实时和密集的物体检测,其中包含了具有三个主要特征的边缘注意力卷积神经网络(EAWNET)。首先,它可以在不平衡类别方面快速准确地识别远程空中和日常风景对象。其次,采用边缘预先锚固锚来增强边缘计算因特网检测效率。第三,我们的EAWNet网络使用边缘感测对象结构,充分利用注意力机制来动态屏蔽不同类型的对象,并在多个尺度上执行目标识别。远程空中物体的边缘恢复效果和目标检测性能显着提高。我们探讨各种架构的效率,并使用各种骨干网和数据增强策略来提高培训过程,以增加培训数据的种类,并克服输入图像的大小限制。广泛的实验和对COCO和大型DOTA数据集的综合评估证明了该框架的有效性,实现了在实际点击对象检测中实现最先进的性能。

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