Person Re-Identification with Limited Supervision
暫譯: 有限監督下的人員重識別

Panda, Rameswar, Roy-Chowdhury, Amit K.

  • 出版商: Morgan & Claypool
  • 出版日期: 2021-09-30
  • 售價: $1,450
  • 貴賓價: 9.5$1,378
  • 語言: 英文
  • 頁數: 98
  • 裝訂: Quality Paper - also called trade paper
  • ISBN: 1636392253
  • ISBN-13: 9781636392257
  • 海外代購書籍(需單獨結帳)

商品描述

Person re-identification is the problem of associating observations of targets in different non-overlapping cameras. Most of the existing learning-based methods have resulted in improved performance on standard re-identification benchmarks, but at the cost of time-consuming and tediously labeled data. Motivated by this, learning person re-identification models with limited to no supervision has drawn a great deal of attention in recent years.

In this book, we provide an overview of some of the literature in person re-identification, and then move on to focus on some specific problems in the context of person re-identification with limited supervision in multi-camera environments. We expect this to lead to interesting problems for researchers to consider in the future, beyond the conventional fully supervised setup that has been the framework for a lot of work in person re-identification.

Chapter 1 starts with an overview of the problems in person re-identification and the major research directions. We provide an overview of the prior works that align most closely with the limited supervision theme of this book. Chapter 2 demonstrates how global camera network constraints in the form of consistency can be utilized for improving the accuracy of camera pair-wise person re-identification models and also selecting a minimal subset of image pairs for labeling without compromising accuracy. Chapter 3 presents two methods that hold the potential for developing highly scalable systems for video person re-identification with limited supervision. In the one-shot setting where only one tracklet per identity is labeled, the objective is to utilize this small labeled set along with a larger unlabeled set of tracklets to obtain a re-identification model. Another setting is completely unsupervised without requiring any identity labels. The temporal consistency in the videos allows us to infer about matching objects across the cameras with higher confidence, even with limited to no supervision. Chapter 4 investigates person re-identification in dynamic camera networks. Specifically, we consider a novel problem that has received very little attention in the community but is critically important for many applications where a new camera is added to an existing group observing a set of targets. We propose two possible solutions for on-boarding new camera(s) dynamically to an existing network using transfer learning with limited additional supervision. Finally, Chapter 5 concludes the book by highlighting the major directions for future research.

商品描述(中文翻譯)

人員再識別是將不同非重疊攝影機中目標觀察結果進行關聯的問題。大多數現有的基於學習的方法在標準再識別基準上取得了改進的性能,但代價是需要耗時且繁瑣的標註數據。受到此啟發,近年來在有限或無監督的情況下學習人員再識別模型引起了廣泛的關注。

在本書中,我們提供了一些人員再識別文獻的概述,然後專注於在多攝影機環境中有限監督下的人員再識別的特定問題。我們期望這能引發研究者在未來考慮有趣的問題,超越傳統的完全監督設置,這一直是人員再識別研究的框架。

第一章開始於人員再識別問題的概述及主要研究方向。我們提供了與本書有限監督主題最密切相關的先前工作的概述。第二章展示了如何利用全球攝影機網絡約束(以一致性的形式)來提高攝影機成對人員再識別模型的準確性,並選擇一個最小的圖像對子集進行標註而不影響準確性。第三章提出了兩種方法,這些方法有潛力開發出具有高度可擴展性且在有限監督下進行視頻人員再識別的系統。在一次性標註的情況下,每個身份僅標註一個追蹤片段,目標是利用這個小的標註集以及一個更大的未標註追蹤片段集來獲得再識別模型。另一種情況是完全無監督,不需要任何身份標籤。視頻中的時間一致性使我們能夠在有限或無監督的情況下,以更高的信心推斷跨攝影機的匹配物體。第四章探討了在動態攝影機網絡中的人員再識別。具體而言,我們考慮了一個在社群中受到很少關注但對許多應用至關重要的新問題,即在觀察一組目標的現有群組中添加新攝影機。我們提出了兩種可能的解決方案,使用有限的額外監督通過轉移學習動態地將新攝影機納入現有網絡。最後,第五章通過強調未來研究的主要方向來結束本書。