Extracting effective and discriminative features is very important for addressing the challenging person re-identification (re-ID) task. Prevailing deep convolutional neural networks (CNNs) usually use high-level features for identifying pedestrian. However, some essential spatial information resided in low-level features such as shape, texture and color will be lost when learning the high-level features, due to extensive padding and pooling operations in the training stage. In addition, most existing person re-ID methods are mainly based on hand-craft bounding boxes where images are precisely aligned. It is unrealistic in practical applications, since the exploited object detection algorithms often produce inaccurate bounding boxes. This will inevitably degrade the performance of existing algorithms. To address these problems, we put forward a novel person re-ID model that fuses high- and low-level embeddings to reduce the information loss caused in learning high-level features. Then we divide the fused embedding into several parts and reconnect them to obtain the global feature and more significant local features, so as to alleviate the affect caused by the inaccurate bounding boxes. In addition, we also introduce the spatial and channel attention mechanisms in our model, which aims to mine more discriminative features related to the target. Finally, we reconstruct the feature extractor to ensure that our model can obtain more richer and robust features. Extensive experiments display the superiority of our approach compared with existing approaches. Our code is available at https://github.com/libraflower/MutipleFeature-for-PRID.
翻译:提取有效且具有歧视性的特征对于解决具有挑战性的人重新识别(再识别)任务非常重要。 深层神经神经网络(CNNs)通常使用高层次的特征来识别行人。 但是,由于在培训阶段广泛铺垫和集中作业,在学习高层次特征时,一些基本的空间信息将丢失。此外,大多数现有人员再识别方法主要基于手动的捆绑盒,图像在其中精确匹配。在实际应用中,这是不切实际的,因为被利用的物体探测算法往往产生不准确的捆绑框。这将不可避免地降低现有算法的性能。为解决这些问题,我们提出了一个新的人再定位模型,将高层次和低层次的嵌入结合起来,以减少在学习高层次特征过程中造成的信息损失。然后,我们将连接到几个部分,重新连接它们以获得全球特征和更重要的地方特征,从而减轻由不准确的捆绑框所造成的影响。此外,我们还将引入空间和渠道上的现有测算方法。我们现有的算模型中,我们现有的演示的演示模型中,可以获取我们现有的更坚实的演示的模型。