Detecting a defective nozzle in a digital printing system

US12214601B2 · US · B2

Patent metadata
FieldValue
Publication numberUS-12214601-B2
Application numberUS-202117921359-A
CountryUS
Kind codeB2
Filing dateMay 12, 2021
Priority dateMay 17, 2020
Publication dateFeb 4, 2025
Grant dateFeb 4, 2025

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Abstract

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A method includes, receiving a first digital image (FDI) to-be printed by a digital printing system (DPS) ( 10 ). In a in training phase: for first selected regions ( 111 ) in the FDI, a first set of synthetic images (SIs) ( 112 A, 112 B, 114 A, 114 B, 116 A, 116 B) having a defect caused by a defective part (DP) ( 99 ) in the first selected regions, is produced; a neural network (NN) ( 150 ) is trained to detect the defect using the first set SIs. In a subsequent detection phase: the NN is applied for identifying, in a second digital image (SDI) ( 136, 146 ) acquired from an image produced by the DPS, suspected second regions ( 135, 145 ); for each of the second regions, a second set ( 137, 147 ) of SIs having DPs that form the defects, is produced; and the DP is identified by comparing, in each of the second regions, between the SDI and the second set SIs.

First claim

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The invention claimed is: 1. A method for detecting a defective part (DP) in a digital printing system (DPS), the method comprising: receiving a first digital image (FDI) to be printed by the DPS; in a training phase: producing, for one or more first selected regions in the FDI, a first set of one or more synthetic images having a defect caused by the DP in the one or more first selected regions; selecting, based on a predefined selection criterion, the first selected regions that comprise features for training a neural network (NN); and training the NN to detect the defect using at least one of the synthetic images of the first set; and in a detection phase that is subsequent to the training phase: applying the trained NN for identifying, in a second digital image (SDI) acquired from a printed image produced by the DPS, one or more second regions suspected of having the defect; producing, for each of the second regions, a second set of one or more synthetic images having one or more DPs producing respectively one or more of the defects; and identifying at least the DP by comparing, in each of the second regions, between the SDI and the one or more synthetic images of the second set. 2. The method according to claim 1 , wherein the NN comprises a convolutional NN (CNN). 3. The method according to claim 2 , wherein the CNN has an inception-v3 architecture. 4. The method according to claim 1 , wherein at least one of the FDI and SDI comprises a product image. 5. The method according to claim 1 , wherein the DPS comprise nozzles for directing a printing fluid onto a substrate, wherein the DP comprises a defective nozzle (DN) from among the nozzles, and wherein the defect comprises a missing nozzle fault (MNF) caused by a blocked orifice of the DN. 6. The method according to claim 1 , wherein the DPS comprise nozzles for directing a printing fluid onto a substrate, wherein the DP comprises a partially-clogged nozzle from among the nozzles, and wherein the defect comprises a registration error caused by the partially-clogged nozzle, which directs a printing fluid jetted at a deflected angle to land on a substrate at a distance from an intended landing position. 7. A system for detecting a defective part (DP) in a digital printing system (DPS), the system comprising: an interface, which is configured to receive: (i) a first digital image (FDI) to be printed by the DPS, and (ii) a second digital image (SDI) acquired from a printed image produced by the DPS; and a processor, wherein in a training phase, the processor is configured, to: (i) produce, for one or more first selected regions in the FDI, a first set of one or more synthetic images having a defect caused by the DP in the one or more first selected regions, (ii) select, based on a predefined selection criterion, the first selected regions that comprise features for training a neural network (NN), and (iii) train the NN to detect the defect using at least one of the synthetic images of the first set; and in a detection phase that is subsequent to the training phase, the processor is configured, to: (i) apply the trained NN for identifying, in the SDI, one or more second regions suspected of having the defect, (ii) produce, for each of the second regions, a second set of one or more synthetic images having one or more DPs producing respectively one or more of the defects, and (iii) identify at least the DP by comparing, in each of the second regions, between the SDI and the one or more synthetic images of the second set. 8. The system according to claim 7 , wherein the NN comprises a convolutional NN (CNN). 9. The system according to claim 8 , wherein the CNN has an inception-v3 architecture. 10. The system according to claim 7 , wherein at least one of the FDI and SDI comprises a product image. 11. The system according to claim 7 , wherein the DPS comprise nozzles for directing a printing fluid onto a substrate, wherein the DP comprises a defective nozzle (DN) from among the nozzles, and wherein the defect detected by the NN comprises a missing nozzle fault (MNF) caused by a blocked orifice of the DN. 12. The system according to claim 7 , wherein the DPS comprise nozzles for directing a printing fluid onto a substrate, wherein the DP comprises a partially-clogged nozzle from among the nozzles, and wherein the defect comprises a registration error caused by the partially-clogged nozzle, which directs a printing fluid jetted at a deflected angle to land on a substrate at a distance from an intended landing position.

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What does patent US12214601B2 cover?
A method includes, receiving a first digital image (FDI) to-be printed by a digital printing system (DPS) ( 10 ). In a in training phase: for first selected regions ( 111 ) in the FDI, a first set of synthetic images (SIs) ( 112 A, 112 B, 114 A, 114 B, 116 A, 116 B) having a defect caused by a defective part (DP) ( 99 ) in the first selected regions, is produced; a neural network (NN) ( 15…
Who is the assignee on this patent?
Landa Corp Ltd
What technology area does this patent fall under?
Primary CPC classification B41J2/2142. Mapped technology areas include Operations & Transport.
When was this patent published?
Publication date Tue Feb 04 2025 00:00:00 GMT+0000 (Coordinated Universal Time) (B2). Legal status and post-grant events are not shown on this page.
What related patents are in patentsdb?
We list 8 related publications on this page (citations in our corpus or others sharing the same primary CPC).