scholarly journals Evaluation Method For RSS Rubber Using Image Processing

2006 ◽  
Vol 20 (3) ◽  
pp. 265-273 ◽  
Author(s):  
Usman Ahmad ◽  
◽  
Fahmi Riadi ◽  
I Dewa Made Subrata ◽  
◽  
...  
2014 ◽  
Vol 1048 ◽  
pp. 173-177 ◽  
Author(s):  
Ying Mei Wang ◽  
Yan Mei Li ◽  
Wan Yue Hu

Fabric shape style is one of the most important conditions in textile appearance evaluation, and also the main factor influences customer purchasing psychology. At first, the previous fabric shape style evaluation methods are classified and summarized, measurement and evaluation method discussed from tactic and dynamic aspects. Then, companied with computer vision principle, a non-contact method for measuring fabric shape style was put forward. In this method, two high-speed CCD cameras were used to capture fabric movement dynamically, fabric sequences image were obtained in this process. Used the image processing technology include pretreatment and feature point matching to get 3D motion parameters, it can provide data supports for shape style evaluation.


Author(s):  
Xuyang Wang ◽  
Yudong Fang ◽  
Zhenfei Zhan

Self-piercing riveting (SPR) is a key joining technique for lightweight materials, and it has been widely used in the automobile manufacturing. However, complex process parameters and huge configurations of substrate materials can cause potential button cracks, which bring significant challenges for quality inspection. This paper presents a failure crack detection and evaluation method based on image processing. Firstly, the SPR rivet cracks image is preprocessed through gray-scale transformation and interested area selection; next, the binary crack image is utilized to identify the crack parameters; finally, a crack evaluation method is developed to evaluate the rivet crack quality with quantized scores. In addition, subject matter experts (SME)’ knowledge is incorporated to verify the crack detection and quality evaluation, and case study is conducted to demonstrate feasibility of the proposed method.


1995 ◽  
Vol 44 (497) ◽  
pp. 226-230
Author(s):  
Masaru ZAKO ◽  
Sadao HIROSE ◽  
Hiroshi URAGAKI ◽  
Hiroshi TAKAHASHI

2015 ◽  
Vol 60 (1) ◽  
Author(s):  
Mahdieh Kazemimoghadam ◽  
Mohsen Janmaleki ◽  
Mohamad Hassan Fouani ◽  
Sara Abbasi

AbstractDifferentiation of bone marrow mesenchymal stem cells (BMSCs) into neural cells has received significant attention in recent years. However, there is still no practical method to evaluate differentiation process non-invasively and practically. The cellular quality evaluation method is still limited to conventional techniques, which are based on extracting genes or proteins from the cells. These techniques are invasive, costly, time consuming, and should be performed by relevant experts in equipped laboratories. Moreover, they cannot anticipate the future status of cells. Recently, cell morphology has been introduced as a feasible way of monitoring cell behavior because of its relationship with cell proliferation, functions and differentiation. In this study, rat BMSCs were induced to differentiate into neurons. Subsequently, phase contrast images of cells taken at certain intervals were subjected to a series of image processing steps and cell morphology features were calculated. In order to validate the viability of applying image-based approaches for estimating the quality of differentiation process, neural-specific markers were measured experimentally throughout the induction. The strong correlation between quantitative imaging metrics and experimental outcomes revealed the capability of the proposed approach as an auxiliary method of assessing cell behavior during differentiation.


2017 ◽  
Vol 885 ◽  
pp. 228-233
Author(s):  
Kornél Bortnyik ◽  
Péter Barkóczy

The eutectic structure of aluminum alloys has different morphology. To describe these a different image processing and analysis workflow needs to be built. To assign the different image processing steps to the different structure automatically a computational method had to be developed. In the image processing methods several cellular automata operate. For this expediently a cellular automaton was developed to classify the different eutectic structures. In materials engineering applications a HPP automata is used extensively therefore this type of automata were chosen to solve the mentioned problem. This article shows the simplicity of this method as well as the desired evaluation method.


2021 ◽  
Author(s):  
Dae-Hyun Jung ◽  
Cheoul Young Kim ◽  
Taek Sung Lee ◽  
Soo Hyun Park

Abstract Background: The truss on tomato plants is a group or cluster of smaller stems where flowers and fruit develop, while a growing truss is the most extended part of the stem. Because the state of the growing truss reacts sensitively to the surrounding environment, it is essential to control the growth in the early stages. With the recent development of IT and artificial intelligence technology in agriculture, a previous study developed a real-time acquisition and evaluation method for images using robots. Further, we used image processing to locate the growing truss and flowering rooms to extract growth information such as the height of the flower room and hard crab. Among the different vision algorithms, the CycleGAN algorithm was used to generate and transform unpaired images using generatively learning images. In this study, we developed a robot-based system for simultaneously acquiring RGB and depth images of the tomato growing truss and flower room groups.Results: The segmentation performance for approximately 35 samples was compared through the false negative (FN) and false positive (FP) indicators. For the depth camera image, we obtained FN as 17.55±3.01% and FP as 17.76±3.55%. Similarly, for CycleGAN, we obtained FN as approximately 19.24±1.45% and FP as 18.24±1.54%. As a result of image processing through depth image, IoU was 63.56 ± 8.44%, and when segmentation was performed through CycelGAN, IoU was 69.25 ± 4.42%, indicating that CycleGAN is advantageous in extracting the desired growing truss. Conclusions: The scannability was confirmed when the image scanning robot drove in a straight line through the plantation in the tomato greenhouse, which confirmed the on-site possibility of the image extraction technique using CycleGAN. In the future, the proposed approach is expected to be used in vision technology to scan the tomato growth indicators in greenhouses using an unmanned robot platform.


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