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Boosting Detection Results of HOG-Based Algorithms Through Non-linear Metrics and ROI Fusion

机译:通过非线性指标和ROI融合提高基于生猪的算法的检测结果

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Practical application of object detection systems, in research or industry, favors highly optimized black box solutions. We show how such a highly optimized system can be further augmented in terms of its reliability with only a minimal increase of computation times, i.e. preserving realtime boundaries. Our solution leaves the initial (HOG-based) detector unchanged and introduces novel concepts of non-linear metrics and fusion of ROIs. In this context we also introduce a novel way of combining feature vectors for mean-shift grouping. We evaluate our approach on a standarized image database with a HOG detector, which is representative for practical applications. Our results show that the amount of false-positive detections can be reduced by a factor of 4 with a negligable complexity increase. Although introduced and applied to a HOG-based system, our approach can easily be adapted for different detectors.
机译:物体检测系统的实际应用,在研究或行业中,最优化的黑匣子解决方案。我们展示了如何在其可靠性方面进一步增强这种高度优化的系统,只有最小的计算时间增加,即保留实时边界。我们的解决方案使初始(基于生猪的)探测器保持不变,并引入了新颖的非线性指标和ROI融合的新颖概念。在此上下文中,我们还引入了一种结合特征向量的新方法,用于平均换档分组。我们在具有猪探测器的单位化图像数据库上评估我们的方法,它是实际应用的代表性。我们的研究结果表明,误染色检测量可以减少4倍,可忽略的复杂性增加。虽然介绍并应用于基于生猪的系统,但我们的方法很容易适应不同的探测器。

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