Information Extraction from Product Labels A Machine Vision Approach

  Рет қаралды 81

Computer Science & IT Conference Proceedings

Computer Science & IT Conference Proceedings

Күн бұрын

Information Extraction from Product Labels: A Machine Vision Approach
Hansi Seitaj and Vinayak Elangovan, USA
Abstract
This research tackles the challenge of manual data extraction from product labels by employing a blend of computer vision and Natural Language Processing (NLP). We introduce an enhanced model that combines Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN) in a Convolutional Recurrent Neural Network (CRNN) for reliable text recognition. Our model is further refined by incorporating the Tesseract OCR engine, enhancing its applicability in Optical Character Recognition (OCR) tasks. The methodology is augmented by NLP techniques and extended through the Open Food Facts API (Application Programming Interface) for database population and text-only label prediction. The CRNN model is trained on encoded labels and evaluated for accuracy on a dedicated test set. Importantly, our approach enables visually impaired individuals to access essential information on product labels, such as directions and ingredients. Overall, the study highlights the efficacy of deep learning and OCR in automating label extraction and recognition.
Keywords
Optical Character Recognition (OCR), Machine Vision, Machine Learning, Convolutional Recurrent Neural Network (CRNN), Natural Language Processing (NLP), Text Recognition, Test Classification, Product Labels, Deep Learning, Data Extraction
Full Text : aircconline.co...
Abstract URL : aircconline.co...
Volume URL : airccse.org/cs...
#machinevision #machinelearning #convolutionalneuralnetwork #naturallanguageprocessing #productlabels #deeplearning #dataextraction

Пікірлер
Multi-Faceted Question Complexity Estimation Targeting Topic Domain-Specificity
17:37
Computer Science & IT Conference Proceedings
Рет қаралды 2
Comparative Performance Analysis of Single Shot Detector and Faster R CNN for Object Detection
35:18
Computer Science & IT Conference Proceedings
Рет қаралды 16
ТВОИ РОДИТЕЛИ И ЧЕЛОВЕК ПАУК 😂#shorts
00:59
BATEK_OFFICIAL
Рет қаралды 5 МЛН
風船をキャッチしろ!🎈 Balloon catch Challenges
00:57
はじめしゃちょー(hajime)
Рет қаралды 89 МЛН
Enhancing the MLOPS Deployment Process using Gen AI
19:39
Computer Science & IT Conference Proceedings
Рет қаралды 39
Measure Square x Stoneapp: Unmatched Integration Webinar
56:39
David Hunt Seminar
56:33
NSF AI Institute - Athena
Рет қаралды 23
SD2: Synthetic Doppler Spectrum Denoiser using SSM
19:32
Computer Science & IT Conference Proceedings
Рет қаралды 12
IEEE OFCCT 2024 • In-situ Soil Quality Monitoring Systems
46:17
IEEE Future Directions
Рет қаралды 10
The Strange Physics Principle That Shapes Reality
32:44
Veritasium
Рет қаралды 6 МЛН
Transformers (how LLMs work) explained visually | DL5
27:14
3Blue1Brown
Рет қаралды 3,7 МЛН
CompTIA Network+ Certification Video Course
3:46:51
PowerCert Animated Videos
Рет қаралды 8 МЛН