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Discovering overlooked objects: Context-based boosting of object detection in indoor scenes

机译:发现被忽视的物体:室内场景中基于上下文的物体检测增强

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摘要

Contextual detection not only uses visual features, but also leverages contextual information from the scene in the image. Most conventional context based methods have heavy training cost or large dependence on the original baseline detector. To overcome such shortcomings, we propose a new method based on co-occurrence context. It is built upon recent off-the-shelf baseline detector and achieves higher accuracy than existing works while detecting additional true positives which the baseline detector could not find. Furthermore we construct an indoor specific NYUv2-context dataset to investigate context-based detection of indoor objects. It is a subset of original NYU-depth-v2 dataset and to be published online to encourage context researches. In the experiment, the proposed method obtained 21.22% mAP which outperforms the baseline and compared context-based work by 0.91 and 0.36 percentage point mAP respectively. (C) 2016 Elsevier B.V. All rights reserved.
机译:上下文检测不仅使用视觉功能,而且还利用图像中场景的上下文信息。大多数传统的基于上下文的方法具有沉重的训练成本或对原始基线检测器的较大依赖性。为了克服这些缺点,我们提出了一种基于共现上下文的新方法。它建立在最新的现成基线检测器的基础上,与现有技术相比,它具有更高的准确性,同时还能检测出基线检测器找不到的其他真实阳性结果。此外,我们构建了一个室内特定的NYUv2上下文数据集,以研究基于上下文的室内对象检测。它是原始NYU-depth-v2数据集的子集,将在线发布以鼓励进行上下文研究。在实验中,所提出的方法获得了21.22%的mAP,胜过基线,并且比基于上下文的工作分别多了0.91和0.36个百分点的mAP。 (C)2016 Elsevier B.V.保留所有权利。

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