Automatic Identification And Data Collection Via Barcode Laser Scanning.

1986 ◽  
Author(s):  
Michel Jacobeus
2008 ◽  
Vol 47 (01) ◽  
pp. 14-25 ◽  
Author(s):  
A. Gerger ◽  
C. Wagner ◽  
J. Smolle ◽  
M. Wiltgen

Summary Objectives: Confocal laser scanning microscopy (CLSM) is used for quick medical checkups. The aim of this study is to check the discrimination power of texture features for the automatic identification of diagnostic significant regions in CLSM views of skin lesions. Methods: In tissue counter analysis (TCA) the images are dissected in equal square elements, where different classes of features are calculated out. Features defined in the spatial domain are based on histogram (grey level distribution) and co-occurrence matrix (grey level combinations). The features defined in the frequency domain are based on spectral properties of the wavelet Daubechie 4 transform (texture exploration at different scales) and the Fourier transform (global texture properties are localized in the spectrum). Hundred cases of benign common nevi and malignant melanoma were used as the study set. Classification was done with CART (Classification and Regression Trees) analysis which splits the set of square elements into homogenous terminal nodes and generates a set of splitting rules. Results: Features based on the wavelet transform provide the best results with 96.0% of correctly classified elements from benign common nevi and 97.0% from malignant melanoma. The classification results are relocated to the images by use of the splitting rules as diagnostic aid. The discriminated square elements are highlighted in the images, showing tissue with features in good accordance with typical diagnostic CLSM features. Conclusion: Square elements with more than 80% of discrimination power enable the identification of diagnostic highly significant parts in confocal microscopic views of malignant melanoma.


2020 ◽  
Vol 15 (1) ◽  
pp. 59-64
Author(s):  
Lucia Madleňáková ◽  
Anna Paďourová

Information is an important competitive tool, nowadays. Those, who dispose of them on time, gain the advantage of being able to take decisions sooner than competition. The recency and relevance of information is becoming a necessity also in the field of logistics chain management, especially the 100% traceability of the movement of shipments or goods is crucial not only for the distribution service provider but also for the customer who wants to know where his shipment or goods is. As “Industry 4.0” trends suggest, these requirements are increasingly extended to include data not only on the location of shipments, but on the identification of the owner of the goods, where the shipment was moved from and for what purpose and finally what triggered the activity. This “traceability” is based on the implementation of “perfect” information systems that must be filled with quality and correct data. In addition to data volume growing that will be generated by the various devices, same level of importance seems to be the electronic data exchange among stakeholders. The use of Automatic Identification Tools (AIDC) is the key to data collection in the field of logistics and distribution activities. The paper discusses the possibilities of implementing AIDC using RFID technology in the specific field.


Sensors ◽  
2021 ◽  
Vol 21 (18) ◽  
pp. 6007
Author(s):  
Lino Comesaña-Cebral ◽  
Joaquín Martínez-Sánchez ◽  
Henrique Lorenzo ◽  
Pedro Arias

Individual tree (IT) segmentation is crucial for forest management, supporting forest inventory, biomass monitoring or tree competition analysis. Light detection and ranging (LiDAR) is a prominent technology in this context, outperforming competing technologies. Aerial laser scanning (ALS) is frequently used for forest documentation, showing good point densities at the tree-top surface. Even though under-canopy data collection is possible with multi-echo ALS, the number of points for regions near the ground in leafy forests drops drastically, and, as a result, terrestrial laser scanners (TLS) may be required to obtain reliable information about tree trunks or under-growth features. In this work, an IT extraction method for terrestrial backpack LiDAR data is presented. The method is based on DBSCAN clustering and cylinder voxelization of the volume, showing a high detection rate (∼90%) for tree locations obtained from point clouds, and low commission and submission errors (accuracy over 93%). The method includes a sensibility assessment to calculate the optimal input parameters and adapt the workflow to real-world data. This approach shows that forest management can benefit from IT segmentation, using a handheld TLS to improve data collection productivity.


Author(s):  
J. Böhm ◽  
M. Bredif ◽  
T. Gierlinger ◽  
M. Krämer ◽  
R. Lindenberg ◽  
...  

Current 3D data capturing as implemented on for example airborne or mobile laser scanning systems is able to efficiently sample the surface of a city by billions of unselective points during one working day. What is still difficult is to extract and visualize meaningful information hidden in these point clouds with the same efficiency. This is where the FP7 IQmulus project enters the scene. IQmulus is an interactive facility for processing and visualizing big spatial data. In this study the potential of IQmulus is demonstrated on a laser mobile mapping point cloud of 1 billion points sampling ~ 10 km of street environment in Toulouse, France. After the data is uploaded to the IQmulus Hadoop Distributed File System, a workflow is defined by the user consisting of retiling the data followed by a PCA driven local dimensionality analysis, which runs efficiently on the IQmulus cloud facility using a Spark implementation. Points scattering in 3 directions are clustered in the tree class, and are separated next into individual trees. Five hours of processing at the 12 node computing cluster results in the automatic identification of 4000+ urban trees. Visualization of the results in the IQmulus fat client helps users to appreciate the results, and developers to identify remaining flaws in the processing workflow.


Author(s):  
A. Anastasiou ◽  
E. Syrokou ◽  
S. Tapinaki ◽  
A. Georgopoulos

Abstract. The aim of the present paper is the geometric documentation of the church of St Spyridon using modern digital methods of data collection and processing. The church is located in the Medieval City of Rhodes and the residues of several different historical phases found in the church prove the rarity and the amount of alterations it underwent over the years.Geodetic measurements, laser scanning and acquisition of photographic data were performed, in order to construct the 3D model of the church. 23 drawings were drafted at a scale of 1:50, including horizontal sections, exterior and vertical sections. The projected information of each drawing is described with the help of the corresponding orthophotographs. Moreover, the three-dimensional photorealistic model (textured model) of the church was created, as well as a stereoscopic video and interactive virtual tour, via the 3DHOP platform.


Author(s):  
J. Markiewicz ◽  
P. Podlasiak ◽  
M. Kowalczyk ◽  
D. Zawieska

Camera calibration is one of the basic photogrammetric tasks responsible for the quality of processed products. The majority of calibration is performed with a specially designed test field or during the self-calibration process. The research presented in this paper aims to answer the question of whether it is necessary to use control points designed in the standard way for determination of camera interior orientation parameters. Data from close-range laser scanning can be used as an alternative. The experiments shown in this work demonstrate the potential of laser measurements, since the number of points that may be involved in the calculation is much larger than that of commonly used ground control points. The problem which still exists is the correct and automatic identification of object details in the image, taken with a tested camera, as well as in the data set registered with the laser scanner.


2018 ◽  
Vol 61 (2) ◽  
pp. 189 ◽  
Author(s):  
Bogdan Apostol ◽  
Serban Chivulescu ◽  
Albert Ciceu ◽  
Marius Petrila ◽  
Ionut-Silviu Pascu ◽  
...  

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