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Building Robust Industrial Applicable Object Detection Models using Transfer Learning and Single Pass Deep Learning Architectures

机译:建立强大的工业适用的物体检测模型,使用转移学习和单通机深度学习架构

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The uprising trend of deep learning in computer vision and artificial intelligence can simply not be ignored. On the most diverse tasks, from recognition and detection to segmentation, deep learning is able to obtain state-of-the-art results, reaching top notch performance. In this paper we explore how deep convolutional neural networks dedicated to the task of object detection can improve our industrial-oriented object detection pipelines, using state-of-the-art open source deep learning frameworks, like Darknet. By using a deep learning architecture that integrates region proposals, classification and probability estimation in a single run, we aim at obtaining real-time performance. We focus on reducing the needed amount of training data drastically by exploring transfer learning, while still maintaining a high average precision. Furthermore we apply these algorithms to two industrially relevant applications, one being the detection of promotion boards in eye tracking data and the other detecting and recognizing packages of warehouse products for augmented advertisements.
机译:计算机视觉和人工智能深入学习的起义趋势不能忽视。在最多样化的任务中,从识别和检测到分割,深度学习能够获得最先进的结果,达到顶级陷波表现。在本文中,我们探讨了专用于物体检测任务的深度卷积神经网络,可以使用艺术最先进的开源深度学习框架改善我们的工业导向的物体检测管道,如Darknet。通过使用深度学习架构,可以在一次运行中集成区域提案,分类和概率估计,我们的目标是获得实时性能。我们专注于减少通过探索转移学习的培训数据所需的培训数据,同时保持高平均精度。此外,我们将这些算法应用于两种工业相关的应用,一个是检测眼睛跟踪数据的促销板以及用于增强广告的仓库产品的其他检测和识别包装。

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