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Deep Learning Approaches for Detecting Objects from Images: A Review

机译:检测来自图像的对象的深度学习方法:评论

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Detecting objects from images is a challenging problem in the domain of computer vision and plays a very crucial role for wide range of real-time applications. The ever-increasing growth of deep learning due to availability of large training data and powerful GPUs helped computer vision community to build commercial products and services which were not possible a decade ago. Deep learning architectures especially convolutional neural networks have achieved state-of-the-art performance on worldwide competitions for visual recognition like ILSVRC, PASCAL VOC. Deep learning techniques alleviate the need of human expertise from designing the handcrafted features and automatically learn the features. This resulted into use of deep architectures in many domains like computer vision (image classification, visual recognition) and natural language processing (language modeling, speech recognition). Object detection is one such promising area immensely needed to be used in automated applications like self-driving cars, robotics, drone image analysis. This paper analytically reviews state-of-the-art deep learning techniques based on convolutional neural networks for object detection.
机译:从图像中检测对象是计算机视觉域中的一个具有挑战性的问题,在广泛的实时应用中起着非常重要的作用。由于大型培训数据的可用性和强大的GPU而导致的深度学习的不断增长有助于计算机愿景群落建立十年前不可能的商业产品和服务。深度学习架构尤其是卷积神经网络在全球竞争中实现了最先进的表现,如ILSVRC,Pascal VOC等视觉认可。深入学习技术减轻了人类专业知识的需要,从设计手工制作功能并自动学习功能。这导致在计算机视觉(图像分类,视觉识别)和自然语言处理(语言建模,语音识别)等域中使用深度架构。物体检测是一种如此有希望的领域,需要用于自动驾驶汽车,机器人,无人机图像分析等自动应用中。本文分析了基于卷积神经网络进行对象检测的最先进的深度学习技术。

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