Irregularity Inspection using Neural Radiance Field
- URL: http://arxiv.org/abs/2408.11251v1
- Date: Wed, 21 Aug 2024 00:14:07 GMT
- Title: Irregularity Inspection using Neural Radiance Field
- Authors: Tianqi Ding, Dawei Xiang,
- Abstract summary: Large-scale production machinery is becoming increasingly important.
It is often challenging for professionals to conduct defect inspections on such large machinery.
We propose a system based on neural network modeling (NeRF) of 3D twin models.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the increasing growth of industrialization, more and more industries are relying on machine automation for production. However, defect detection in large-scale production machinery is becoming increasingly important. Due to their large size and height, it is often challenging for professionals to conduct defect inspections on such large machinery. For example, the inspection of aging and misalignment of components on tall machinery like towers requires companies to assign dedicated personnel. Employees need to climb the towers and either visually inspect or take photos to detect safety hazards in these large machines. Direct visual inspection is limited by its low level of automation, lack of precision, and safety concerns associated with personnel climbing the towers. Therefore, in this paper, we propose a system based on neural network modeling (NeRF) of 3D twin models. By comparing two digital models, this system enables defect detection at the 3D interface of an object.
Related papers
- AR-Facilitated Safety Inspection and Fall Hazard Detection on Construction Sites [17.943278018516416]
We are exploring the potential of head-mounted augmented reality to facilitate safety inspections on high-rise construction sites.
A particular concern in the industry is inspecting perimeter safety screens on higher levels of construction sites, intended to prevent falls of people and objects.
We aim to support workers performing this inspection task by tracking which parts of the safety screens have been inspected.
We use machine learning to automatically detect gaps in the perimeter screens that require closer inspection and remediation and to automate reporting.
arXiv Detail & Related papers (2024-12-02T08:38:43Z) - Automatic Prompt Generation and Grounding Object Detection for Zero-Shot Image Anomaly Detection [17.06832015516288]
We propose a zero-shot training-free approach for automated industrial image anomaly detection using a multimodal machine learning pipeline.
Our proposed model enables efficient, scalable, and objective quality control in industrial manufacturing settings.
arXiv Detail & Related papers (2024-11-28T15:42:32Z) - Evaluating Vision Transformer Models for Visual Quality Control in Industrial Manufacturing [0.0]
One of the most promising use-cases for machine learning in industrial manufacturing is the early detection of defective products.
We evaluate current vision transformer models together with anomaly detection methods.
We give guidelines for choosing a suitable model architecture for a quality control system in practice.
arXiv Detail & Related papers (2024-11-22T14:12:35Z) - Uncertainty Estimation for 3D Object Detection via Evidential Learning [63.61283174146648]
We introduce a framework for quantifying uncertainty in 3D object detection by leveraging an evidential learning loss on Bird's Eye View representations in the 3D detector.
We demonstrate both the efficacy and importance of these uncertainty estimates on identifying out-of-distribution scenes, poorly localized objects, and missing (false negative) detections.
arXiv Detail & Related papers (2024-10-31T13:13:32Z) - Joint object detection and re-identification for 3D obstacle
multi-camera systems [47.87501281561605]
This research paper introduces a novel modification to an object detection network that uses camera and lidar information.
It incorporates an additional branch designed for the task of re-identifying objects across adjacent cameras within the same vehicle.
The results underscore the superiority of this method over traditional Non-Maximum Suppression (NMS) techniques.
arXiv Detail & Related papers (2023-10-09T15:16:35Z) - Monocular 2D Camera-based Proximity Monitoring for Human-Machine
Collision Warning on Construction Sites [1.7223564681760168]
Accident of struck-by machines is one of the leading causes of casualties on construction sites.
Monitoring workers' proximities to avoid human-machine collisions has aroused great concern in construction safety management.
This study proposes a novel framework for proximity monitoring using only an ordinary 2D camera to realize real-time human-machine collision warning.
arXiv Detail & Related papers (2023-05-29T07:47:27Z) - Distributional Instance Segmentation: Modeling Uncertainty and High
Confidence Predictions with Latent-MaskRCNN [77.0623472106488]
In this paper, we explore a class of distributional instance segmentation models using latent codes.
For robotic picking applications, we propose a confidence mask method to achieve the high precision necessary.
We show that our method can significantly reduce critical errors in robotic systems, including our newly released dataset of ambiguous scenes.
arXiv Detail & Related papers (2023-05-03T05:57:29Z) - Hierarchical Point Attention for Indoor 3D Object Detection [111.04397308495618]
This work proposes two novel attention operations as generic hierarchical designs for point-based transformer detectors.
First, we propose Multi-Scale Attention (MS-A) that builds multi-scale tokens from a single-scale input feature to enable more fine-grained feature learning.
Second, we propose Size-Adaptive Local Attention (Local-A) with adaptive attention regions for localized feature aggregation within bounding box proposals.
arXiv Detail & Related papers (2023-01-06T18:52:12Z) - MMRNet: Improving Reliability for Multimodal Object Detection and
Segmentation for Bin Picking via Multimodal Redundancy [68.7563053122698]
We propose a reliable object detection and segmentation system with MultiModal Redundancy (MMRNet)
This is the first system that introduces the concept of multimodal redundancy to address sensor failure issues during deployment.
We present a new label-free multi-modal consistency (MC) score that utilizes the output from all modalities to measure the overall system output reliability and uncertainty.
arXiv Detail & Related papers (2022-10-19T19:15:07Z) - Learning to Identify Drilling Defects in Turbine Blades with Single
Stage Detectors [15.842163335920954]
We propose a model based on Retina drilling defects in X-ray images of turbine blades.
The application is challenging due to the image resolutions in which defects are very small and hardly captured by the commonly used anchor sizes.
We validate the model with $3$-fold cross-validation, showing a very high accuracy in identifying images with defects.
arXiv Detail & Related papers (2022-08-08T18:44:51Z) - Cognitive Visual Inspection Service for LCD Manufacturing Industry [80.63336968475889]
This paper discloses a novel visual inspection system for liquid crystal display (LCD), which is currently a dominant type in the FPD industry.
System is based on two cornerstones: robust/high-performance defect recognition model and cognitive visual inspection service architecture.
arXiv Detail & Related papers (2021-01-11T08:14:35Z)
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.