AI封口橡胶检测机
AI sealing rubber inspection machine

Detect Φ 4-6, Φ 8-10, Φ 10-12.5, Φ 16-18, and sealing rubber

 

The AI sealing rubber detection machine uses processes such as image acquisition, image processing, image annotation, AI algorithm models, and software scheduling to detect appearance defects in sealing rubber, reject defective products, and calculate and divide good products into boxes.

Maximum speed: 600-1500 pieces/minute

Detection accuracy: 0.1mm

Detection area: 360 °

  • Defect Detection
  • Product Advantages
Defect Detection
Stamping defective
Stamping defective
Height measurement
Height measurement
The hole is not round
The hole is not round
Abrasion
Abrasion
Bubble
Bubble
Lack of glue
Lack of glue
Dirt
Dirt
Hole Cracking
Hole Cracking
Product Advantages
Independently Develop AI Algorithms and Industrial Computing Power
Independently Develop AI Algorithms and Industrial Computing Power
Independently Develop AI Algorithms and Industrial Computing Power

With the Al algorithm based on deep learning, focusing on network cascading, equipped with KVIS-cloud platform, it provides customers with targeted convolutional neural network technology solutions to more accurately reflect image features.

The use of AI-specific NPU chips guarantees powerful computing power for product detection under high-speed operation and accelerated reasoning.

0-Code Development Model Incorporating Camera Imaging
0-Code Development Model Incorporating Camera Imaging
0-Code Development Model Incorporating Camera Imaging

Provide full-process 0-code model training, optimization and model prediction services, template loading, one-click model change.

Fusion of image multimodal information input to achieve product defect detection and identification.

Multi-Node Parallel Work, Balanced Computing Load, Efficient Data Processing
Multi-Node Parallel Work, Balanced Computing Load, Efficient Data Processing
Multi-Node Parallel Work, Balanced Computing Load, Efficient Data Processing

Multi-node layout to process data efficiently in parallel computing mode, avoiding single node load data operations.

superior arithmetic power to improve the whole machine image acquisition and transmission capabilities, and a high degree of synergy with software scheduling.

Self-Developed Optical Imaging, Image Streaming Collaborative Analysis to Reduce Misjudgment
Self-Developed Optical Imaging, Image Streaming Collaborative Analysis to Reduce Misjudgment
Self-Developed Optical Imaging, Image Streaming Collaborative Analysis to Reduce Misjudgment
360° shooting, simulating human eye inspection, enables collaborative defect detection and classification of image streams.
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