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Mutual Constraint Learning for Weakly Supervised Object Detection

机译:相互约束学习的弱监督对象检测

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The abundance of image-level labels and the lack of large scale bounding boxes detailed annotations promotes the expansion of Weakly-Supervised techniques for Object Detection (WSOD). In this work, we propose a novel mutual constraint learning for convolutional neural networks applied to detect bounding boxes only with global image-level supervision. The essence of our architecture is two new differentiable modules, Determination Network, and Parameterised Spatial Division, which explicitly allows the spatial division of the feature map within the network. These learnable modules give neural networks the ability to constructively generate shadow activation maps, dependent on the class activation maps. To demonstrate the effectiveness of our model for WSOD, we conduct extensive experiments on the multi-MNIST dataset. Experimental results show that mutual constraint learning can (i) help improve the accuracy of multi-category tasks, (ii) implement in an end-to-end way only with the image-level annotations, and (iii) output accurate bounding box labels, thereby achieving object detection.
机译:丰富的图像级标签和缺少大型边框的详细注释,促进了对象检测(WSOD)的弱监督技术的发展。在这项工作中,我们为卷积神经网络提出了一种新颖的相互约束学习方法,该方法仅在全局图像级监督下用于检测边界框。我们架构的本质是两个新的可区分模块,确定网络和参数化空间划分,它们明确允许在网络中对特征图进行空间划分。这些可学习的模块使神经网络能够根据类激活图来建设性地生成阴影激活图。为了证明我们的模型对WSOD的有效性,我们在多MNIST数据集上进行了广泛的实验。实验结果表明,相互约束学习可以(i)帮助提高多类别任务的准确性,(ii)仅使用图像级注释以端到端的方式实施,以及(iii)输出准确的边界框标签从而实现物体检测。

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