146,797 research outputs found

    Deep reinforcement active learning for human-in-the-loop person re-identification

    Get PDF
    Most existing person re-identification(Re-ID) approaches achieve superior results based on the assumption that a large amount of pre-labelled data is usually available and can be put into training phrase all at once. However, this assumption is not applicable to most real-world deployment of the Re-ID task. In this work, we propose an alternative reinforcement learning based human-in-the-loop model which releases the restriction of pre-labelling and keeps model upgrading with progressively collected data. The goal is to minimize human annotation efforts while maximizing Re-ID performance. It works in an iteratively updating framework by refining the RL policy and CNN parameters alternately. In particular, we formulate a Deep Reinforcement Active Learning (DRAL) method to guide an agent (a model in a reinforcement learning process) in selecting training samples on-the-fly by a human user/annotator. The reinforcement learning reward is the uncertainty value of each human selected sample. A binary feedback (positive or negative) labelled by the human annotator is used to select the samples of which are used to fine-tune a pre-trained CNN Re-ID model. Extensive experiments demonstrate the superiority of our DRAL method for deep reinforcement learning based human-in-the-loop person Re-ID when compared to existing unsupervised and transfer learning models as well as active learning models

    Highly Efficient Regression for Scalable Person Re-Identification

    Full text link
    Existing person re-identification models are poor for scaling up to large data required in real-world applications due to: (1) Complexity: They employ complex models for optimal performance resulting in high computational cost for training at a large scale; (2) Inadaptability: Once trained, they are unsuitable for incremental update to incorporate any new data available. This work proposes a truly scalable solution to re-id by addressing both problems. Specifically, a Highly Efficient Regression (HER) model is formulated by embedding the Fisher's criterion to a ridge regression model for very fast re-id model learning with scalable memory/storage usage. Importantly, this new HER model supports faster than real-time incremental model updates therefore making real-time active learning feasible in re-id with human-in-the-loop. Extensive experiments show that such a simple and fast model not only outperforms notably the state-of-the-art re-id methods, but also is more scalable to large data with additional benefits to active learning for reducing human labelling effort in re-id deployment

    Human Centered Computer Vision Techniques for Intelligent Video Surveillance Systems

    Get PDF
    Nowadays, intelligent video surveillance systems are being developed to support human operators in different monitoring and investigation tasks. Although relevant results have been achieved by the research community in several computer vision tasks, some real applications still exhibit several open issues. In this context, this thesis focused on two challenging computer vision tasks: person re-identification and crowd counting. Person re-identification aims to retrieve images of a person of interest, selected by the user, in different locations over time, reducing the time required to the user to analyse all the available videos. Crowd counting consists of estimating the number of people in a given image or video. Both tasks present several complex issues. In this thesis, a challenging video surveillance application scenario is considered in which it is not possible to collect and manually annotate images of a target scene (e.g., when a new camera installation is made by Law Enforcement Agency) to train a supervised model. Two human centered solutions for the above mentioned tasks are then proposed, in which the role of the human operators is fundamental. For person re-identification, the human-in-the-loop approach is proposed, which exploits the operator feedback on retrieved pedestrian images during system operation, to improve system's effectiveness. The proposed solution is based on revisiting relevance feedback algorithms for content-based image retrieval, and on developing a specific feedback protocol, to find a trade-off between the human effort and re-identification performance. For crowd counting, the use of a synthetic training set is proposed to develop a scene-specific model, based on a minimal amount of information of the target scene required to the user. Both solutions are empirically investigated using state-of-the-art supervised models based on Convolutional Neural Network, on benchmark data sets

    Temporal Model Adaptation for Person Re-Identification

    Full text link
    Person re-identification is an open and challenging problem in computer vision. Majority of the efforts have been spent either to design the best feature representation or to learn the optimal matching metric. Most approaches have neglected the problem of adapting the selected features or the learned model over time. To address such a problem, we propose a temporal model adaptation scheme with human in the loop. We first introduce a similarity-dissimilarity learning method which can be trained in an incremental fashion by means of a stochastic alternating directions methods of multipliers optimization procedure. Then, to achieve temporal adaptation with limited human effort, we exploit a graph-based approach to present the user only the most informative probe-gallery matches that should be used to update the model. Results on three datasets have shown that our approach performs on par or even better than state-of-the-art approaches while reducing the manual pairwise labeling effort by about 80%

    Control of posture with FES systems

    Get PDF
    One of the major obstacles in restoration of functional FES supported standing in paraplegia is the lack of knowledge of a suitable control strategy. The main issue is how to integrate the purposeful actions of the non-paralysed upper body when interacting with the environment while standing, and the actions of the artificial FES control system supporting the paralyzed lower extremities. In this paper we provide a review of our approach to solving this question, which focuses on three inter-related areas: investigations of the basic mechanisms of functional postural responses in neurologically intact subjects; re-training of the residual sensory-motor activities of the upper body in paralyzed individuals; and development of closed-loop FES control systems for support of the paralyzed joints

    Cognitive visual tracking and camera control

    Get PDF
    Cognitive visual tracking is the process of observing and understanding the behaviour of a moving person. This paper presents an efficient solution to extract, in real-time, high-level information from an observed scene, and generate the most appropriate commands for a set of pan-tilt-zoom (PTZ) cameras in a surveillance scenario. Such a high-level feedback control loop, which is the main novelty of our work, will serve to reduce uncertainties in the observed scene and to maximize the amount of information extracted from it. It is implemented with a distributed camera system using SQL tables as virtual communication channels, and Situation Graph Trees for knowledge representation, inference and high-level camera control. A set of experiments in a surveillance scenario show the effectiveness of our approach and its potential for real applications of cognitive vision
    • ā€¦
    corecore