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Towards General Purpose Object Detection: Deep Dense Grid Based Object Detection

机译:朝向通用对象检测:基于深度密集的网格的物体检测

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Object detection is one of the most challenging and very important branch of computer vision. Some of the challenging aspect of a detection network is the fact that an object can appear anywhere in the image, be partially occluded by another object, might appear in crowd or have greatly varying scales. Consequently, we propose a fine grained and equally spaced dense grid cells throughout an input image be responsible of detecting an object. We re-purpose an already existing deep state-of-the-art detector or classifier into deep and dense detector. Our dense object detector uses binary class encoding and hence suitable for very large multi-class object detector. We also propose a more flexible and robust non-max suppression implementation to filter out redundant detection of same object. As a result of our dense object detection implementation we have managed to increase YOLOv2’s performance on Pascal VOC 2007 and COCO datasets by +2.3% and +7.2% mean average precision (mAP) respectively.
机译:对象检测是计算机视觉最具挑战性和非常重要的分支之一。检测网络的一些具有挑战性的方面是对象可以出现在图像中的任何位置,由另一个对象部分封闭,可能出现在人群中或具有大量变化的尺度。因此,我们提出了在输入图像中的细粒细粒和等间隔的相等间隔的致密栅格单元负责检测物体。我们将现有的深度最先进的探测器或分类器重新用作深层和致密的探测器。我们的密集对象探测器使用二进制类编码,因此适用于非常大的多级对象检测器。我们还提出了更灵活且强大的非最大抑制实现,以过滤掉相同对象的冗余检测。由于我们密集的物体检测实现,我们已经设法增加了yolov2在Pascal VOC 2007和Coco Datasets上的性能+ 2.3%和+ 7.2%平均平均精度(MAP)。

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