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Investigation of hidden parameters influencing the automated object detection in images from the deep seafloor of the HAUSGARTEN observatory

机译:对豪斯花园天文台深海底图像中的自动目标检测产生影响的隐藏参数的研究

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Detecting objects in underwater image sequences and video frames automatically, requires the application of selected algorithms in consecutive steps. Most of these algorithms are controlled by a set of parameters, which need to be calibrated for an optimal detection result. Those parameters determine the effectivity and efficiency of an algorithm and their impact is usually well known. There are however further non-algorithmic impact factors (or hidden parameters), which bias the training of a machine learning system as well as the subsequent detection process and thus need to be well understood and taken into account. In the context of megafauna detection in benthic images, we investigate the effects of some of these parameters on our machine learning based detection system iSIS. The images to be analyzed were taken at the deep-sea, long-term observatory HAUSGARTEN in which five experts labeled seven distinct object classes as an annotation gold standard. We found, that the hidden parameters from imaging as well as the fusion of expert knowledge could partly be compensated and were able to achieve detection performances of 0.67 precision and 0.87 recall. Despite the efforts to compensate the hidden parameters, the detection performance was still varying across the image transect. This poses the potential occurrence of further hidden parameters not taken into account so far.
机译:自动检测水下图像序列和视频帧中的对象需要在连续步骤中应用选定的算法。这些算法中的大多数都由一组参数控制,这些参数需要进行校准以获得最佳检测结果。这些参数确定算法的有效性和效率,其影响通常是众所周知的。但是,还有其他非算法影响因素(或隐藏参数),它们会影响机器学习系统的训练以及后续的检测过程,因此需要很好地理解和考虑。在底栖图像中的大型动物检测中,我们调查了其中一些参数对我们基于机器学习的检测系统iSIS的影响。要分析的图像是在深海长期观测站HAUSGARTEN上拍摄的,其中五位专家将七个不同的对象类别标记为注释金标准。我们发现,成像中的隐藏参数以及专家知识的融合可以部分补偿,并且能够实现0.67精度和0.87召回率的检测性能。尽管付出了很多努力来补偿隐藏参数,但整个图像横断面的检测性能仍在变化。这造成了到目前为止尚未考虑的其他隐藏参数的潜在出现。

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