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Object instance identification with fully convolutional networks

机译:全卷积网络的对象实例识别

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摘要

This paper presents a novel approach for instance search and object detection, applied to museum visits. This approach relies on fully convolutional networks (FCN) to obtain region proposals and object representation. Our proposal consists in four steps: a classical convolutional network is first fined-tuned as classifier over the dataset, next we build from this network a second one, fully convolutional, trained as classifier, that focuses on all regions of the corpus images, this network is used in a third step to define image global descriptors in a siamese architecture using triplets of images, and eventually these descriptors are then used for retrieval using classical scalar product between vectors. Our framework has the following features: i) it is well suited for small datasets with low objects variability as we use transfer learning, ii) it does not require any additional component in the network as we rely on classical (i.e. not fully convolutional) and fully convolutional networks, and iii) it does not need region annotations in the dataset as it deals with regions in a unsupervised way. Through multiple experiments on two image datasets taken from museum visits, we detail the effect of each parameter, and we show that the descriptors obtained using our proposed network outperform those from previous state-of-the-art approaches.
机译:本文提出了一种新颖的方法,例如应用于博物馆参观的搜索和物体检测。这种方法依赖于全卷积网络(FCN)来获得区域提议和对象表示。我们的建议包括四个步骤:首先对经典卷积网络进行微调,以作为数据集上的分类器;接下来,我们从该网络中构建第二个全卷积,训练为分类器的网络,该算法专注于语料库图像的所有区域。在第三步中,将网络用于使用三胞胎图像定义暹罗体系结构中的图像全局描述符,并最终将这些描述符用于向量之间的经典标量积检索。我们的框架具有以下特征:i)当我们使用转移学习时,它非常适合对象可变性低的小型数据集; ii)由于我们依赖经典(即不完全卷积),因此不需要网络中的任何其他组件;以及完全卷积网络,并且iii)由于它以无人监督的方式处理区域,因此在数据集中不需要区域注释。通过对来自博物馆参观的两个图像数据集的多次实验,我们详细说明了每个参数的效果,并且我们表明,使用我们提出的网络获得的描述符性能优于以前的最新方法。

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