Application Of ADNN For Background Subtraction In Smart Surveillance
System
- URL: http://arxiv.org/abs/2301.00264v1
- Date: Sat, 31 Dec 2022 18:42:11 GMT
- Title: Application Of ADNN For Background Subtraction In Smart Surveillance
System
- Authors: Piyush Batra, Gagan Raj Singh, Neeraj Goyal
- Abstract summary: We develop an intelligent video surveillance system that uses ADNN architecture for motion detection, trims the video with parts only containing motion, and performs anomaly detection on the trimmed video.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Object movement identification is one of the most researched problems in the
field of computer vision. In this task, we try to classify a pixel as
foreground or background. Even though numerous traditional machine learning and
deep learning methods already exist for this problem, the two major issues with
most of them are the need for large amounts of ground truth data and their
inferior performance on unseen videos. Since every pixel of every frame has to
be labeled, acquiring large amounts of data for these techniques gets rather
expensive. Recently, Zhao et al. [1] proposed one of a kind Arithmetic
Distribution Neural Network (ADNN) for universal background subtraction which
utilizes probability information from the histogram of temporal pixels and
achieves promising results. Building onto this work, we developed an
intelligent video surveillance system that uses ADNN architecture for motion
detection, trims the video with parts only containing motion, and performs
anomaly detection on the trimmed video.
Related papers
- Accelerating Object Detection with YOLOv4 for Real-Time Applications [0.276240219662896]
Convolutional Neural Network (CNN) have emerged as a powerful tool for recognizing image content and in computer vision approach for most problems.
This paper introduces the brief introduction of deep learning and object detection framework like Convolutional Neural Network(CNN)
arXiv Detail & Related papers (2024-10-17T17:44:57Z) - Neuromorphic Synergy for Video Binarization [54.195375576583864]
Bimodal objects serve as a visual form to embed information that can be easily recognized by vision systems.
Neuromorphic cameras offer new capabilities for alleviating motion blur, but it is non-trivial to first de-blur and then binarize the images in a real-time manner.
We propose an event-based binary reconstruction method that leverages the prior knowledge of the bimodal target's properties to perform inference independently in both event space and image space.
We also develop an efficient integration method to propagate this binary image to high frame rate binary video.
arXiv Detail & Related papers (2024-02-20T01:43:51Z) - NPF-200: A Multi-Modal Eye Fixation Dataset and Method for
Non-Photorealistic Videos [51.409547544747284]
NPF-200 is the first large-scale multi-modal dataset of purely non-photorealistic videos with eye fixations.
We conduct a series of analyses to gain deeper insights into this task.
We propose a universal frequency-aware multi-modal non-photorealistic saliency detection model called NPSNet.
arXiv Detail & Related papers (2023-08-23T14:25:22Z) - Deep Neural Networks in Video Human Action Recognition: A Review [21.00217656391331]
Video behavior recognition is one of the most foundational tasks of computer vision.
Deep neural networks are built for recognizing pixel-level information such as images with RGB, RGB-D, or optical flow formats.
In our article, the performance of deep neural networks surpassed most of the techniques in the feature learning and extraction tasks.
arXiv Detail & Related papers (2023-05-25T03:54:41Z) - Differentiable Frequency-based Disentanglement for Aerial Video Action
Recognition [56.91538445510214]
We present a learning algorithm for human activity recognition in videos.
Our approach is designed for UAV videos, which are mainly acquired from obliquely placed dynamic cameras.
We conduct extensive experiments on the UAV Human dataset and the NEC Drone dataset.
arXiv Detail & Related papers (2022-09-15T22:16:52Z) - RandomSEMO: Normality Learning Of Moving Objects For Video Anomaly
Detection [6.895697402893975]
We propose a superpixel-based video data transformation technique named Random Superpixel Erasing on Moving Objects (RandomSEMO) and Moving Object Loss (MOLoss)
RandomSEMO is applied to the moving object regions by randomly erasing their superpixels.
MOLoss urges the model to focus on learning normal objects captured within RandomSEMO by amplifying the loss on the pixels near the moving objects.
arXiv Detail & Related papers (2022-02-13T08:39:49Z) - Recent Trends in 2D Object Detection and Applications in Video Event
Recognition [0.76146285961466]
We discuss the pioneering works in object detection, followed by the recent breakthroughs that employ deep learning.
We highlight recent datasets for 2D object detection both in images and videos, and present a comparative performance summary of various state-of-the-art object detection techniques.
arXiv Detail & Related papers (2022-02-07T14:15:11Z) - Video Salient Object Detection via Contrastive Features and Attention
Modules [106.33219760012048]
We propose a network with attention modules to learn contrastive features for video salient object detection.
A co-attention formulation is utilized to combine the low-level and high-level features.
We show that the proposed method requires less computation, and performs favorably against the state-of-the-art approaches.
arXiv Detail & Related papers (2021-11-03T17:40:32Z) - Few-Shot Learning for Video Object Detection in a Transfer-Learning
Scheme [70.45901040613015]
We study the new problem of few-shot learning for video object detection.
We employ a transfer-learning framework to effectively train the video object detector on a large number of base-class objects and a few video clips of novel-class objects.
arXiv Detail & Related papers (2021-03-26T20:37:55Z) - Anomaly Detection in Video via Self-Supervised and Multi-Task Learning [113.81927544121625]
Anomaly detection in video is a challenging computer vision problem.
In this paper, we approach anomalous event detection in video through self-supervised and multi-task learning at the object level.
arXiv Detail & Related papers (2020-11-15T10:21:28Z) - Robust and efficient post-processing for video object detection [9.669942356088377]
This work introduces a novel post-processing pipeline that overcomes some of the limitations of previous post-processing methods.
Our method improves the results of state-of-the-art specific video detectors, specially regarding fast moving objects.
And applied to efficient still image detectors, such as YOLO, provides comparable results to much more computationally intensive detectors.
arXiv Detail & Related papers (2020-09-23T10:47:24Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.