{"title":"用于工业金属检测的物理强化产品自适应深度网络","authors":"Suhrid Das;Ankit Tyagi;Vishal Monga","doi":"10.1109/JSEN.2025.3562705","DOIUrl":null,"url":null,"abstract":"This study addresses a longstanding metal-detection problem (classifying a product as clean or contaminated) using two-frequency electromagnetic fields by analyzing complex temporal data. Traditional contamination detection methods rely on analyzing permittivity and conductivity signals obtained when products pass through the detector’s electromagnetic field. While reliable, these methods struggle with product effect—a phenomenon where conductive product signals overshadow contaminant signals, leading to false negatives. Advances in deep learning (DL) have enhanced detection accuracy but often require large training datasets, which are impractical in many industrial metal detection scenarios where the cost of data acquisition is high. To address these challenges, we propose physically enriched DL architectures that integrate domain knowledge with state-of-the-art feature extraction models. Our contribution centers on two key innovations: adaptive models capable of countering product effect and improving contamination detection accuracy compared to both traditional signal processing and machine learning (ML) methods, and second, an enhanced ability to classify contaminant (metal) type, enabled by a data preprocessing module that we call learnable denoisers. Extensive experiments on challenging real-world data demonstrate that our product adaptation modules and a newly designed training strategy that extracts pure metal signatures from contaminated products enable scalable performance across diverse products. The proposed models successfully mitigate both false positives and negatives (missed metal detection) breaking a stiff tradeoff. Further, the benefits of our approach are most pronounced when training data are limited indicating superior generalizability.","PeriodicalId":447,"journal":{"name":"IEEE Sensors Journal","volume":"25 11","pages":"20124-20135"},"PeriodicalIF":4.3000,"publicationDate":"2025-04-25","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Physically Enriched Product Adaptive Deep Networks for Industrial Metal Detection\",\"authors\":\"Suhrid Das;Ankit Tyagi;Vishal Monga\",\"doi\":\"10.1109/JSEN.2025.3562705\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"This study addresses a longstanding metal-detection problem (classifying a product as clean or contaminated) using two-frequency electromagnetic fields by analyzing complex temporal data. Traditional contamination detection methods rely on analyzing permittivity and conductivity signals obtained when products pass through the detector’s electromagnetic field. While reliable, these methods struggle with product effect—a phenomenon where conductive product signals overshadow contaminant signals, leading to false negatives. Advances in deep learning (DL) have enhanced detection accuracy but often require large training datasets, which are impractical in many industrial metal detection scenarios where the cost of data acquisition is high. To address these challenges, we propose physically enriched DL architectures that integrate domain knowledge with state-of-the-art feature extraction models. Our contribution centers on two key innovations: adaptive models capable of countering product effect and improving contamination detection accuracy compared to both traditional signal processing and machine learning (ML) methods, and second, an enhanced ability to classify contaminant (metal) type, enabled by a data preprocessing module that we call learnable denoisers. Extensive experiments on challenging real-world data demonstrate that our product adaptation modules and a newly designed training strategy that extracts pure metal signatures from contaminated products enable scalable performance across diverse products. The proposed models successfully mitigate both false positives and negatives (missed metal detection) breaking a stiff tradeoff. Further, the benefits of our approach are most pronounced when training data are limited indicating superior generalizability.\",\"PeriodicalId\":447,\"journal\":{\"name\":\"IEEE Sensors Journal\",\"volume\":\"25 11\",\"pages\":\"20124-20135\"},\"PeriodicalIF\":4.3000,\"publicationDate\":\"2025-04-25\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"IEEE Sensors Journal\",\"FirstCategoryId\":\"103\",\"ListUrlMain\":\"https://ieeexplore.ieee.org/document/10977754/\",\"RegionNum\":2,\"RegionCategory\":\"综合性期刊\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q1\",\"JCRName\":\"ENGINEERING, ELECTRICAL & ELECTRONIC\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"IEEE Sensors Journal","FirstCategoryId":"103","ListUrlMain":"https://ieeexplore.ieee.org/document/10977754/","RegionNum":2,"RegionCategory":"综合性期刊","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"ENGINEERING, ELECTRICAL & ELECTRONIC","Score":null,"Total":0}
Physically Enriched Product Adaptive Deep Networks for Industrial Metal Detection
This study addresses a longstanding metal-detection problem (classifying a product as clean or contaminated) using two-frequency electromagnetic fields by analyzing complex temporal data. Traditional contamination detection methods rely on analyzing permittivity and conductivity signals obtained when products pass through the detector’s electromagnetic field. While reliable, these methods struggle with product effect—a phenomenon where conductive product signals overshadow contaminant signals, leading to false negatives. Advances in deep learning (DL) have enhanced detection accuracy but often require large training datasets, which are impractical in many industrial metal detection scenarios where the cost of data acquisition is high. To address these challenges, we propose physically enriched DL architectures that integrate domain knowledge with state-of-the-art feature extraction models. Our contribution centers on two key innovations: adaptive models capable of countering product effect and improving contamination detection accuracy compared to both traditional signal processing and machine learning (ML) methods, and second, an enhanced ability to classify contaminant (metal) type, enabled by a data preprocessing module that we call learnable denoisers. Extensive experiments on challenging real-world data demonstrate that our product adaptation modules and a newly designed training strategy that extracts pure metal signatures from contaminated products enable scalable performance across diverse products. The proposed models successfully mitigate both false positives and negatives (missed metal detection) breaking a stiff tradeoff. Further, the benefits of our approach are most pronounced when training data are limited indicating superior generalizability.
期刊介绍:
The fields of interest of the IEEE Sensors Journal are the theory, design , fabrication, manufacturing and applications of devices for sensing and transducing physical, chemical and biological phenomena, with emphasis on the electronics and physics aspect of sensors and integrated sensors-actuators. IEEE Sensors Journal deals with the following:
-Sensor Phenomenology, Modelling, and Evaluation
-Sensor Materials, Processing, and Fabrication
-Chemical and Gas Sensors
-Microfluidics and Biosensors
-Optical Sensors
-Physical Sensors: Temperature, Mechanical, Magnetic, and others
-Acoustic and Ultrasonic Sensors
-Sensor Packaging
-Sensor Networks
-Sensor Applications
-Sensor Systems: Signals, Processing, and Interfaces
-Actuators and Sensor Power Systems
-Sensor Signal Processing for high precision and stability (amplification, filtering, linearization, modulation/demodulation) and under harsh conditions (EMC, radiation, humidity, temperature); energy consumption/harvesting
-Sensor Data Processing (soft computing with sensor data, e.g., pattern recognition, machine learning, evolutionary computation; sensor data fusion, processing of wave e.g., electromagnetic and acoustic; and non-wave, e.g., chemical, gravity, particle, thermal, radiative and non-radiative sensor data, detection, estimation and classification based on sensor data)
-Sensors in Industrial Practice