Manufacturers and Logistics Providers Embrace AI to Enhance Barcode Reading Performance

Embracing AI for Enhanced Barcode Reading Performance



In recent years, the importance of traceability and safety in manufacturing has surged, prompting manufacturers worldwide to seek innovative solutions in their production lines. A significant aspect of this quest revolves around improving barcode reading performance, which is crucial for effective tracking and operational efficiency. Recognizing the potential of artificial intelligence (AI), many companies are now implementing AI-powered technologies to address their biggest challenges in barcode reading, thereby enhancing overall equipment performance.

A survey conducted by Cognex Corporation revealed that an overwhelming 90% of users expect AI to significantly boost accuracy, usability, and decoding rates of barcode scanners. Carl Gerst, Executive Vice President of Vision and ID Products at Cognex, emphasized that integrating AI into barcode reading solutions is central to their mission. He stated, "Our innovative AI-driven barcode reading solutions offer unmatched performance, reliability, and customer experience, addressing our clients' most pressing challenges."

The survey involved responses from 283 individuals representing manufacturing and logistics companies across Asia, North America, and Europe. Its findings highlight the increasing reliance on AI for barcode reading applications and identify key areas where improvements are most anticipated. The foremost concern among respondents was reading difficult codes, with 41% stating that damaged, smeared, or wrinkled barcodes present significant challenges. This was closely followed by issues related to distortion, reflections, and curved surfaces (39%) and problematic code sizes and positions (35%).

In terms of expectations from AI integration, nearly half of the respondents (47%) believe that AI will enhance reading accuracy, particularly for damaged codes. Logisticians emphasized the importance of precise recognition, which has become paramount in an era where accuracy can directly affect operational efficacy.

Reliability and ease of maintenance are critical factors for users when selecting a barcode reader. With only 21% of respondents classifying themselves as experts, and a significant portion identifying as beginners, the demand for reliable performance is crucial. This gap in expertise underlines the urgency for reliable and easily maintainable devices in manufacturers' purchasing decisions.

Cognex's latest models, the DataMan 290 and DataMan 390, embody advanced decoding capabilities tailored to meet contemporary challenges in barcode reading. These solutions are proficient at addressing the difficulties reported by users, enhancing the overall reading experience.

Interestingly, the availability of the survey report for free has been welcomed by industry insiders, affirming the relevance of the results in the ongoing transformation of barcode reading technologies. Cognex has simplified the process of implementing high-performance barcode readers, removing barriers to entry for manufacturers striving to enhance quality and efficiency without needing extensive technical knowledge.

With over 40 years in the industry, Cognex has positioned itself as a leading entity in advanced machine vision technology, driving productivity and operational speed for manufacturers and distribution companies alike. Its headquarters near Boston, along with offices in over 30 countries, further solidifies its global reach and commitment to innovative solutions. For further information and resources related to barcode technologies and Cognex’s offerings, prospective clients can visit Cognex’s website.

As the reliance on AI in manufacturing and logistics continues to deepen, leading companies are taking crucial steps to reevaluate and upgrade their barcode reading systems, ensuring they remain competitive and efficient in a fast-evolving market.

Topics Consumer Technology)

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