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Fine-Grained Giant Panda Identification

机译:细粒大熊猫鉴定

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The image-based fine-grained identification of individual giant pandas (Ailuropoda melanoleuca) is an emerging technology, and it is extraordinarily challenging due to the extremely subtle visual differences between individual giant pandas and limited annotated training data. To address these challenges, we propose the Feature-Fusion Convolutional Neural Network with Patch Detector (FFCNN-PD) algorithm, which exploits the discriminative local patches and builds a hierarchical representation generated by fusing both global and local features. Specifically, an attentional cross-channel pooling is embedded in the FFCNN-PD to improve the class- specific patch detectors. In addition, we propose a new giant panda identification dataset (iPanda-30) to establish a benchmark. Experiments on the proposed iPanda-30 dataset and other fine-grained recognition datasets demonstrate the effectiveness of the FFCNN-PD algorithm against the existing state-of-the-arts.
机译:基于图像的细粒大熊猫识别(Ailuropoda melanoleuca)是一项新兴技术,由于各个大熊猫之间的视觉差异非常微弱,且训练数据有限,因此具有挑战性。为了解决这些挑战,我们提出了带有补丁检测器的特征融合卷积神经网络(FFCNN-PD)算法,该算法利用了区分性局部补丁,并构建了通过融合全局特征和局部特征而生成的分层表示。具体而言,将注意的跨通道池嵌入到FFCNN-PD中,以改进特定于类的补丁检测器。此外,我们提出了一个新的大熊猫识别数据集(iPanda-30)以建立基准。对拟议的iPanda-30数据集和其他细粒度识别数据集的实验证明了FFCNN-PD算法相对于现有技术的有效性。

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