Author(s):
Bhoomika Shetty, Madhushree S M, Muddukrishna B.S, Ravindra Shenoy, Kirankumar H, Mahendra Joshi, Girish Pai K
Email(s):
bhoomika.shetty1@learner.manipal.edu , madhushree0505@gmail.com , krishna.mbs@manipal.edu , ravindra.shenoy@manipal.edu , kiran_kch@yahoo.com , mahendra.joshi@idrslabs.com , girish.pai@manipal.edu
DOI:
10.52711/0974-360X.2024.00789
Address:
Bhoomika Shetty1, Madhushree S M1, Muddukrishna B.S2, Ravindra Shenoy3, Kirankumar H4, Mahendra Joshi5, Girish Pai K6*
1Department of Pharmaceutics, Manipal College of Pharmaceutical Sciences, Manipal Academy of Higher Education (MAHE), Manipal.
2Department of Pharmaceutics, Manipal College of Pharmaceutical Sciences, Manipal Academy of Higher Education (MAHE), Manipal.
3Department of Pharmaceutical Quality Assurance, Manipal College of Pharmaceutical Sciences, Manipal Academy of Higher Education (MAHE), Manipal.
4Department of Commerce, Manipal Academy of Higher Education (MAHE), Manipal.
5Vice President – Corporate Development, Ingenus Pharmaceuticals LLC, 100 Ford Rd, Denville, New Jersey, 07834, USA Research and Development, IDRS Labs Pvt. Ltd., Bangalore, Karnataka, INDIA
6Department of Pharmaceutics, Manipal College of Pharmaceutical Sciences, Manipal Academy of Higher Education (MAHE), Manipal.
*Corresponding Author
Published In:
Volume - 17,
Issue - 10,
Year - 2024
ABSTRACT:
The packaging of the drug products depends on the dosage form and the market in which they are to be commercialized. Based on the market, some tablets/capsules are packed in HDPE/PET bottle containers. Packaging plays a crucial role in maintaining product safety, purity, quality, and stability from production until it reaches customers. Ensuring the packaging and product quality are within specifications is essential during the packaging operation. Equipment utilized in the bottle packaging process is employed with many automated controls such as Machine Vision systems, which work on image acquisition principles along with Deep Learning (DL) and Artificial Intelligence (AI) to identify the defects during the process and reject imperfect packaging. MV is one of the leading pillars of Pharma 4.0, which focuses on digitalization and automation in the pharmaceutical manufacturing industry. This paper discusses the latest advancements and applications of MV in pharmaceutical solid dosage form bottle packaging.
Cite this article:
Bhoomika Shetty, Madhushree S M, Muddukrishna B.S, Ravindra Shenoy, Kirankumar H, Mahendra Joshi, Girish Pai K. Machine Vision Based Quality Inspection of Pharmaceutical Bottle Packaging. Research Journal of Pharmacy and Technology. 2024; 17(10):5154-0. doi: 10.52711/0974-360X.2024.00789
Cite(Electronic):
Bhoomika Shetty, Madhushree S M, Muddukrishna B.S, Ravindra Shenoy, Kirankumar H, Mahendra Joshi, Girish Pai K. Machine Vision Based Quality Inspection of Pharmaceutical Bottle Packaging. Research Journal of Pharmacy and Technology. 2024; 17(10):5154-0. doi: 10.52711/0974-360X.2024.00789 Available on: https://rjptonline.org/AbstractView.aspx?PID=2024-17-10-74
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