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[ | |
{ | |
"Observation Type": "2D Measurement", | |
"Sub-Parameters": "dimensions to be measured", | |
"Example": "Diameter, thickness, etc.", | |
"Relevance for Vision System Design": "Guides the sw algorithm to be used", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "2D Measurement", | |
"Sub-Parameters": "Dimenison Range", | |
"Example": "100mm +/- .01mm", | |
"Relevance for Vision System Design": "Guides the Field of View as we would know the dimension that is required.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "2D Measurement", | |
"Sub-Parameters": "Tolerated error of measurement", | |
"Example": "10 microns", | |
"Relevance for Vision System Design": "Influences the selection of high-precision sensors and optics. Affects the algorithm's ability to distinguish between acceptable and unacceptable variances.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Anomaly Detection", | |
"Sub-Parameters": "Types of Anomaly defects to detect", | |
"Example": "Scratches, dents, corrosion", | |
"Relevance for Vision System Design": "Guides the development of specific algorithms for detecting each type of surface irregularity. Influences lighting and camera setup for optimal defect visualization.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Anomaly Detection", | |
"Sub-Parameters": "Minimum Defect Size", | |
"Example": "Minimum detectable size: 0.5 mm", | |
"Relevance for Vision System Design": "Determines the resolution and sensitivity of imaging equipment. Affects system's ability to detect and quantify defect severity.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Print Defect", | |
"Sub-Parameters": "Types of print defects to identify", | |
"Example": "Smudging, misalignment", | |
"Relevance for Vision System Design": "Impacts the development of algorithms for print quality control. Affects camera resolution and processing speed required to identify print errors effectively.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Print Defect", | |
"Sub-Parameters": "Minimum defect size", | |
"Example": "Up to 2 mm", | |
"Relevance for Vision System Design": "Sets the minimum threshold for print defect detection that needs to be detected. Anything smaller than this need not be detected (and thus flagged as a defect)", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Counting", | |
"Sub-Parameters": "Types of objects/features to count", | |
"Example": "Individual components, features", | |
"Relevance for Vision System Design": "Dictates the design of counting algorithms and affects the system's processing speed. Influences camera setup for optimal object recognition and differentiation.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Counting", | |
"Sub-Parameters": "Min and Max object count", | |
"Example": "Min = 0, Max = 100", | |
"Relevance for Vision System Design": "Important for deciding training data to be collected for training the objects.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "3D Measurement", | |
"Sub-Parameters": "Volume or spatial measurements needed", | |
"Example": "Volume, surface area", | |
"Relevance for Vision System Design": "Influences the selection of 3D imaging technologies (like stereoscopic cameras or laser scanners) and impacts algorithm complexity for spatial analysis.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "3D Measurement", | |
"Sub-Parameters": "Accuracy and precision levels", | |
"Example": "±0.1 mm", | |
"Relevance for Vision System Design": "Guides the calibration process and selection of high-precision 3D measurement equipment. Impacts software algorithm development for accurate spatial analysis.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Presence/Absence", | |
"Sub-Parameters": "Details of objects/features to detect", | |
"Example": "Missing components, color deviations", | |
"Relevance for Vision System Design": "Critical for designing detection algorithms. Influences camera resolution and processing strategies to identify presence or absence of specific features or objects.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Presence/Absence", | |
"Sub-Parameters": "Acceptable variance levels", | |
"Example": "Variance up to 5%", | |
"Relevance for Vision System Design": "Sets the system's tolerance for detection errors, affecting the sensitivity and specificity of the algorithms. Impacts the choice of imaging technologies for accurate feature detection.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "OCR (Optical Character Recognition)", | |
"Sub-Parameters": "Font types and sizes to be recognized", | |
"Example": "Arial, size 12", | |
"Relevance for Vision System Design": "Influences OCR algorithm development. Affects the choice of cameras capable of capturing various font sizes clearly.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "OCR (Optical Character Recognition)", | |
"Sub-Parameters": "Reading speed and accuracy requirements", | |
"Example": "99% accuracy at 2 characters per second", | |
"Relevance for Vision System Design": "Dictates the balance between speed and accuracy for the OCR system. Impacts the selection of processing hardware for real-time character recognition.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Code Reading (2D/1D)", | |
"Sub-Parameters": "Types of codes to read (QR, Barcode)", | |
"Example": "QR Codes, UPC Barcodes", | |
"Relevance for Vision System Design": "Guides the development of algorithms for different types of code recognition. Influences camera selection for varying code sizes and distances.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Code Reading (2D/1D)", | |
"Sub-Parameters": "Reading distance and angle", | |
"Example": "Up to 30 cm, 45° angle", | |
"Relevance for Vision System Design": "Determines the system's ability to read codes from various angles and distances. Impacts camera positioning and field of view requirements.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Mismatch Detection", | |
"Sub-Parameters": "Specific features to compare for mismatches", | |
"Example": "Component shapes, color mismatches", | |
"Relevance for Vision System Design": "Essential for algorithm development to identify discrepancies in product features. Influences imaging and processing requirements to compare and detect mismatches accurately.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Mismatch Detection", | |
"Sub-Parameters": "Tolerance levels for mismatches", | |
"Example": "Tolerances up to 5%", | |
"Relevance for Vision System Design": "Dictates the system's sensitivity to mismatches, affecting algorithm design for defect detection and tolerance specification.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Classification", | |
"Sub-Parameters": "Categories of classes to be identified", | |
"Example": "Different product types, defect categories", | |
"Relevance for Vision System Design": "Crucial for developing classification algorithms. Influences sensor and processing capabilities to differentiate between various classes based on physical features.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Classification", | |
"Sub-Parameters": "Features defining each class", | |
"Example": "Shape, size, color patterns", | |
"Relevance for Vision System Design": "Guides the system's ability to recognize and categorize objects", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Assembly Verification", | |
"Sub-Parameters": "Checklist of components or features to verify", | |
"Example": "All screws, connectors in place", | |
"Relevance for Vision System Design": "Influences the development of verification algorithms and imaging strategies to ensure complete assembly. Affects camera setup for capturing all assembly components.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Assembly Verification", | |
"Sub-Parameters": "Sequence of assembly to be followed", | |
"Example": "Step-by-step assembly verification", | |
"Relevance for Vision System Design": "Guides the programming of the system for sequential assembly verification. Affects the design of user interfaces and reporting features for assembly process tracking.", | |
"User Answer": "" | |
}, | |
{ | |
"Observation Type": "Color Verification", | |
"Sub-Parameters": "Color standards or samples to match", | |
"Example": "Pantone 300C", | |
"Relevance for Vision System Design": "Dictates the need for color-accurate imaging systems. Influences the development of algorithms for color matching and verification, impacting camera selection and lighting conditions for accurate color reproduction.", | |
"User Answer": "" | |
} | |
] |