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Things at Your Desk: A Portable Object Dataset

机译:您的桌面的东西:便携式对象数据集

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Object Recognition has been a field in Computer Vision research, which is far from being solved when it comes to localizing the object of interest in an unconstrained environment, captured from different viewing angles. Lack of benchmark datasets clogs the progress in this field since the last decade, barring the subset of a single dataset, alias the Office dataset, which attempted to boost research in the field of pose-invariant detection and recognition of portable object in unconstrained environment. A new challenging object dataset with 30 categories has been proposed with a vision to boost the performances of the task of object recognition for portable objects, thus enhancing the study of cross domain adaptation, in conjunction to the Office dataset. Images of various hand-held objects are captured by the primary camera of a smartphone, where they are photographed under unconstrained environment with varied illumination conditions at different viewing angles. The monte-carlo object detection and recognition has been performed for the proposed dataset, facilitated by existing state-of-the-art transfer learning techniques for cross-domain recognition of objects. The baseline accuracies for existing Domain Adaptation methods, published recently, are also presented in this paper, for the kind perusal of the researchers. A new technique has also been proposed based on the activation maps of the AlexNet to detect objects, alongwith a Generative Adversarial Network (GAN) based Domain Adaptation technique for Object Recognition.
机译:对象识别是计算机视觉研究中的一个领域,这在从不同观察角度捕获的不受约束环境中捕获的感兴趣对象方面,远远待解决。自上一十年以来,缺乏基准数据集在此字段中禁止禁止单个数据集的子集,别名DataSet别名,该进程在Office DataSet中尝试促进在不受约束环境中的姿势不变检测和识别的姿势中的识别领域。已经提出了一个具有30个类别的新具有挑战性的对象数据集,具有愿望,以提高对象识别任务的性能,从而加强对Office数据集的跨域自适应的研究。各种手持物体的图像由智能手机的初级摄像机捕获,在那里它们在不同观察角度下的不受约束环境下拍摄。已经对所提出的数据集进行了Monte-Carlo对象检测和识别,其通过现有的最先进的传输学习技术而促进用于对象的跨域识别。本文还出版了现有领域适应方法的基线准确性,用于研究人员的那种普遍普遍。还基于AlexNet的激活映射提出了一种新技术,以检测对象,沿着基于生成的对象网络(GaN)的域适应技术进行对象识别。

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