Unsupervised Visible-Infrared Person Re-Identification via Pseudo-Label Correction and Modality-Level Alignment
Alapfogalmak
The core message of this paper is to propose a novel unsupervised framework for visible-infrared person re-identification (VI-ReID) that addresses the challenges of noisy pseudo-labels and large modality gaps between visible and infrared images.
Kivonat
The paper presents a novel unsupervised framework called PRAISE for visible-infrared person re-identification (VI-ReID). The key contributions are:
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Theoretical analysis: The authors provide a theoretical analysis to show the limitations of existing unsupervised VI-ReID methods that rely on intra-modality clustering and cross-modality feature matching.
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Pseudo-Label Correction (PLC) strategy: To address the issue of noisy pseudo-labels generated by clustering, the authors propose a PLC strategy that utilizes a Beta Mixture Model to estimate the noise probability of each sample and incorporate a perceptual term into contrastive learning to learn more robust discriminative features.
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Modality-Level Alignment (MLA) strategy: To reduce the large modality gap between visible and infrared images, the authors introduce a bi-directional translation module to generate paired visible-infrared latent features and a cross-modality alignment loss to align the labeling functions of the two modalities.
The proposed PRAISE framework is evaluated on two benchmark datasets, SYSU-MM01 and RegDB, and achieves state-of-the-art performance compared to existing unsupervised VI-ReID methods.
Összefoglaló testreszabása
Átírás mesterséges intelligenciával
Forrás fordítása
Egy másik nyelvre
Gondolattérkép létrehozása
a forrásanyagból
Forrás megtekintése
arxiv.org
Unsupervised Visible-Infrared ReID via Pseudo-label Correction and Modality-level Alignment
Statisztikák
The SYSU-MM01 dataset consists of 287,628 visible images and 15,792 infrared images, with 491 individuals.
The RegDB dataset comprises 412 individuals, each with ten visible and ten infrared images.
Idézetek
"The key challenge of VI-ReID is how to bridge both modalities by minimizing the large modality gap between visible and infrared images."
"Applying the clustering algorithms [20], [22], to generate pseudo labels may generate noisy pseudo-labels. Directly training the model with noisy samples may degrade its performance."
"The cross-modality feature alignment, via matching the marginal distribution of visible and infrared modalities, may misalign the different identities between the two modalities."
Mélyebb kérdések
Can the proposed PRAISE framework be extended to other cross-modal tasks beyond person re-identification
The PRAISE framework can indeed be extended to other cross-modal tasks beyond person re-identification. The key components of the framework, such as the pseudo-label correction strategy and modality-level alignment strategy, can be adapted and applied to various tasks that involve different modalities. For example, in medical imaging, where multiple modalities like MRI, CT scans, and X-rays are used, the PRAISE framework could help in aligning and extracting meaningful features from these different modalities for tasks like disease diagnosis or treatment planning. Similarly, in autonomous driving systems, where data from various sensors such as cameras, LiDAR, and radar are utilized, the PRAISE framework could aid in integrating and aligning information for better object detection and scene understanding.
How can the performance of the PLC strategy be further improved by incorporating additional information, such as spatial-temporal cues or metadata
To further enhance the performance of the PLC strategy, additional information such as spatial-temporal cues or metadata can be incorporated into the framework. Spatial-temporal cues can provide valuable context about the location and movement patterns of individuals, which can help in refining the clustering process and improving the accuracy of pseudo labels. Metadata, such as timestamps, camera angles, or environmental conditions, can offer supplementary information that can assist in better aligning features and reducing noise in the clustering process. By integrating these additional sources of information, the PLC strategy can become more robust and effective in handling noisy pseudo labels.
What are the potential applications of the unsupervised VI-ReID technology in real-world scenarios, and what are the challenges in deploying such systems
The unsupervised VI-ReID technology has several potential applications in real-world scenarios, particularly in security and surveillance systems. One key application is in enhancing security measures in public spaces, airports, and commercial establishments by enabling the automatic identification and tracking of individuals across different cameras and modalities. This can aid in improving security protocols, identifying suspicious activities, and enhancing overall surveillance capabilities. Additionally, in smart cities, VI-ReID technology can be utilized for traffic monitoring, crowd management, and public safety initiatives. However, deploying such systems comes with challenges such as privacy concerns, data security, and the need for robust and reliable algorithms to handle complex real-world scenarios effectively. Addressing these challenges will be crucial for the successful implementation of unsupervised VI-ReID technology in practical applications.