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Improving Object Localization with Fitness NMS and Bounded IoU Loss

机译:用健身网管提高对象本地化并有界iou损失

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We demonstrate that many detection methods are designed to identify only a sufficently accurate bounding box, rather than the best available one. To address this issue we propose a simple and fast modification to the existing methods called Fitness NMS. This method is tested with the DeNet model and obtains a significantly improved MAP at greater localization accuracies without a loss in evaluation rate, and can be used in conjunction with Soft NMS for additional improvements. Next we derive a novel bounding box regression loss based on a set of IoU upper bounds that better matches the goal of IoU maximization while still providing good convergence properties. Following these novelties we investigate RoI clustering schemes for improving evaluation rates for the DeNet wide model variants and provide an analysis of localization performance at various input image dimensions. We obtain a MAP of 33.6%@79Hz and 41.8%@5Hz for MSCOCO and a Titan X (Maxwell). Source code available from: https://github.com/ lachlants/denet
机译:我们展示了许多检测方法旨在仅识别大致精确的边界框,而不是最佳可用的禁用。要解决此问题,我们建议对现有的方法进行简单快速地修改,称为Fitness NMS。使用弯曲模型测试该方法,并以更高的定位精度获得显着改进的地图,而不会评估速率损失,并且可以与柔软的NM一起使用以进行额外的改进。接下来,我们基于一组iou的上限来推导出一种新的边界盒回归损耗,以便更好地匹配iou最大化的目标,同时仍然提供良好的收敛性。在这些Novelties之后,我们调查ROI聚类方案,用于改进弯曲宽模型变体的评估率,并在各种输入图像尺寸下提供定位性能的分析。我们获得33.6%至79Hz的地图和41.8%至41.8%至5Hz,用于MSCOCO和Titan X(Maxwell)。可从:https://github.com/ lachlants / denet获得源代码

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