| Literature DB >> 22412318 |
Ji Ge1, Yaonan Wang, Bowen Zhou, Hui Zhang.
Abstract
A biologically inspired spiking neural network model, called pulse-coupled neural networks (PCNN), has been applied in an automatic inspection machine to detect visible foreign particles intermingled in glucose or sodium chloride injection liquids. Proper mechanisms and improved spin/stop techniques are proposed to avoid the appearance of air bubbles, which increases the algorithms' complexity. Modified PCNN is adopted to segment the difference images, judging the existence of foreign particles according to the continuity and smoothness properties of their moving traces. Preliminarily experimental results indicate that the inspection machine can detect the visible foreign particles effectively and the detection speed, accuracy and correct detection rate also satisfying the needs of medicine preparation.Entities:
Keywords: Intelligent inspection machine; foreign particle detection; illumination styles; image processing; injection quality inspection; modified PCNN
Year: 2009 PMID: 22412318 PMCID: PMC3297148 DOI: 10.3390/s90503386
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Structure of a PCNN neuron.
Figure 12.Water regions and thresholds of first row images in Figures 10 and 11, respectively.
Figure 2.Linking distance between two neurons.
Foreign substance classification.
| Rubber | Glass particles | Fiber | Color spot | Hair | |
|---|---|---|---|---|---|
| White | White | White | Random | Black | |
| Bottle packing | Bottle collision | Cleaning | Bottle packing | workers | |
Figure 3.Top view of inspection system's rotary table architecture.
Figure 4.Three-dimensional drawing of the Automatic Inspection Machine.
Figure 5.Electric configuration of intelligent inspection machine.
Figure 6.Illumination Styles: (a) Silhouette illumination. (b) Bottom light reflection illumination.
Figure 10.Black foreign particle segmentation with back illumination (1-5) sequential images every 200 ms (the carbide is labeled with red rectangle). (i-v) Segmentation results with Canny operator. (a-e) Segmentation results with modified PCNN (falling black objects are labeled)
Figure 11.White foreign substances (glass chip) segmentation with bottom light (1-4) sequential images every 200 ms (bubble and glass chip are labeled with red rectangle and circle respectively). (i-iv) Segmentation results with Canny operator. (a-d) Segmentation results with modified PCNN (falling glass chip and rising bubbles are labeled).
Figure 7.Improved spin/stop technique of the servo system.
Figure 8.(a) Glucose injection's surface defects. (b), (c) are captured images (d) absolute difference between (b) and (c)
Figure 9.Foreign substances detection flowchart.
Knapp-Kushner testing results.
| 35 | 107 | 545 | 5.093 | FQB/FQA > 1 | Machine detection is superior to humans |
Phrases definition in Table 2:
: one of parameters of the inspection machine.
: th bottle's factor of quality.
= (n/N)*10, where is rejected times; is the overall detection time.
of proficient workers.
FQA[ = ∑ FQAi, only belongs to [7, 10] are added.
of inspection machine.
FQB[ = ∑ FQBi, only belongs to [7, 10] are added.
Checking results with inspection machine.
| 1 | 5 | 1 | 111 | 99.1 |
| 2 | 5 | 0 | 112 | |
| 3 | 5 | 1 | 110 |
Workers' re-inspection result.
| Sensitivity | Crushed number | |||||
|---|---|---|---|---|---|---|
| 12 | 53 550 | 44 130 | 54 | 7 | 0.12 | 0.013 |
| 12 | 50 990 | 43 132 | 68 | 5 | 0.16 | 0.010 |
| 12 | 51 056 | 41 075 | 48 | 6 | 0.12 | 0.012 |
| 12 | 50 976 | 40 118 | 55 | 8 | 0.14 | 0.016 |
Here, : overall number of injections to be detected; : qualified number judging by inspection machine; : rejected number out of according to workers' re-inspection; : omission error rates of machine; : crushing rates.
Re-inspection results of machine using qualified products by workers.
| 14 980 | 69 | 0.46 |
| 15 240 | 71 | 0.47 |
| 14 928 | 77 | 0.52 |
| 15 120 | 73 | 0.48 |
Here, : overall number of injections inspected by proficient workers; : rejected number judging by inspection machine and re-confirmed by workers; : omission error rates of workers.
PCNN running time (s).
| With black particles | 0.208 | 0.015 | 0.987 | 0.084 | 7.622 | 0.556 |
| With glass chips | 0.284 | 0.044 | 1.611 | 0.136 | 12.175 | 0.982 |