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People, Penguins and Petri Dishes: Adapting Object Counting Models to New Visual Domains and Object Types Without Forgetting

机译:人,企鹅和培养皿:在不忘记的情况下将对象计数模型适应新的可视域和对象类型

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In this paper we propose a technique to adapt a convolutional neural network (CNN) based object counter to additional visual domains and object types while still preserving the original counting function. Domain-specific normalisation and scaling operators are trained to allow the model to adjust to the statistical distributions of the various visual domains. The developed adaptation technique is used to produce a singular patch-based counting regressor capable of counting various object types including people, vehicles, cell nuclei and wildlife. As part of this study a challenging new cell counting dataset in the context of tissue culture and patient diagnosis is constructed. This new collection, referred to as the Dublin Cell Counting (DCC) dataset, is the first of its kind to be made available to the wider computer vision community. State-of-the-art object counting performance is achieved in both the Shanghaitech (parts A and B) and Penguins datasets while competitive performance is observed on the TRANCOS and Modified Bone Marrow (MBM) datasets, all using a shared counting model.
机译:在本文中,我们提出了一种技术,可在仍保留原始计数功能的同时,将基于卷积神经网络(CNN)的对象计数器适配到其他可视域和对象类型。训练领域特定的归一化和缩放运算符,以使模型能够适应各种视觉域的统计分布。所开发的自适应技术用于生产基于奇异补丁的计数回归器,该回归器能够对包括人,车辆,细胞核和野生生物在内的各种物体类型进行计数。作为这项研究的一部分,在组织培养和患者诊断的背景下,构建了具有挑战性的新细胞计数数据集。这个新的集合被称为都柏林细胞计数(DCC)数据集,是首个可用于更广泛的计算机视觉社区的集合。在Shanghaitech(A和B部分)和企鹅数据集上都实现了最先进的对象计数性能,而在TRANCOS和改良骨髓(MBM)数据集上都观察到了竞争性能,所有这些都使用共享计数模型。

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