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Meta Analysis of Deep Learning Models for Doodle Recognition

机译:涂鸦识别深层学习模型的元分析

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Digital life has augmented the human horizons, code-driven systems have spread to more than half of the world’s inhabitants owing to ambient information and connectivity. Successful combination & integration of human intelligence and machine, also known as Artificial Intelligence continues to impact the future of virtually every industry. From the Harappan civilization till the 21st century, visuals have played a crucial role in our life. The use of hand-made sketches is both frequent and persistent, which empowers human beings with greater retention and the free exchange of ideas and information. This mode of communication is both effective and helpful as witnessed across various communities. Considering the noisiness of the drawings, as the illustrators are often untrained and focus on ideas rather than the technicalities of art, doodle recognition is considered to have significant consequences in computer vision, Natural Language Processing, digit recognition, pattern recognition, and speech recognition. In this paper, we aim to implement various techniques of deep learning to analyze and classify doodles into predefined labels and estimate their efficacy to eventually improve classification accuracy. We have used data from the Google Quick Draw dataset to train and test the various Deep learning Models.
机译:由于环境信息和连接,数字生活已经增强了人类视野,代码驱动系统蔓延到世界上一半以上的居民。人类智能和机器的成功组合和整合,也被称为人工智能继续影响几乎每个行业的未来。从Harappan文明到21世纪,视觉效果在我们的生活中发挥了至关重要的作用。使用手工制作的草图既经常又持久,赋予人类更大的保留和自由交流思想和信息。这种通信模式既有效又有用,与各个社区的见证一样。考虑到图纸的噪音,因为插形人经常未经训练并专注于想法而不是艺术的技术性,被认为是计算机视觉,自然语言处理,数字识别,模式识别和语音识别的重大后果。在本文中,我们的目标是实施深入学习的各种技术,分析和分类为预定义标签并估计它们的功效,最终提高分类准确性。我们使用了Google快速绘制数据集的数据来培训和测试各种深度学习模型。

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