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Underwater Fish Detection with Weak Multi-Domain Supervision

机译:弱多域监管的水下鱼类检测

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Given a sufficiently large training dataset, it is relatively easy to train a modern convolution neural network (CNN) as a required image classifier. However, for the task of fish classification and/or fish detection, if a CNN was trained to detect or classify particular fish species in particular background habitats, the same CNN exhibits much lower accuracy when applied to new/unseen fish species and/or fish habitats. Therefore, in practice, the CNN needs to be continuously fine-tuned to improve its classification accuracy to handle new project-specific fish species or habitats. In this work we present a labelling-efficient method of training a CNN-based fish-detector (the Xception CNN was used as the base) on relatively small numbers (4,000) of project-domain underwater fisho-fish images from 20 different habitats. Additionally, 17,000 of known negative (that is, missing fish) general-domain (VOC2012) above-water images were used. Two publicly available fish-domain datasets supplied additional 27,000 of above-water and underwater positive/fish images. By using this multi-domain collection of images, the trained Xception-based binary (fishot-fish) classifier achieved 0.17% false-positives and 0.61% false-negatives on the project’s 20,000 negative and 16,000 positive holdout test images, respectively. The area under the ROC curve (AUC) was 99.94%.
机译:给定足够大的训练数据集,训练现代卷积神经网络(CNN)作为所需的图像分类器相对容易。但是,对于鱼类分类和/或鱼类检测的任务,如果对CNN进行训练以在特定背景栖息地中检测或分类特定鱼类,则当将CNN应用于新的/不可见的鱼类和/或鱼类时,其准确度要低得多。栖息地。因此,在实践中,需要对CNN进行连续微调,以提高其分类精度,以处理特定于项目的新鱼类或生境。在这项工作中,我们提出了一种基于标签的有效方法,可以训练来自20种不同类型的相对较少数量(4,000)的项目域水下鱼/无鱼图像的基于CNN的鱼探测器(以Xception CNN作为基础)栖息地。此外,还使用了17,000个已知的负(即失踪的鱼)普通域(VOC2012)水上图像。两个可公开获得的鱼域数据集提供了另外27,000个水上和水下阳性/鱼类图像。通过使用此多域图像集合,经过训练的基于Xception的二元(鱼/非鱼)分类器分别在该项目的20,000个阴性和16,000个阳性坚持测试图像上实现了0.17%的假阳性和0.61%的假阴性。 ROC曲线下面积(AUC)为99.94%。

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