A Method to Standing Tree Image Mosaic Based on SURF in Pocket PC

Author(s):  
Dianyuan Han
2001 ◽  
Vol 22 (4) ◽  
pp. 249-266 ◽  
Author(s):  
Christoph Käppler ◽  
Georg Brügner† ◽  
Jochen Fahrenberg
Keyword(s):  

Zusammenfassung: Pocketcomputer eignen sich, psychologische Daten in Feldstudien technisch zuverlässiger als mit Fragebogen bzw. Tagebüchern zu erfassen. In einer Methodenstudie wurde MONITOR, ein für den Pocket-PC PSION geschriebenes, flexibles Programm eingesetzt. Unter Alltagsbedingungen wurden von 61 Studierenden verschiedener Fächer an zwei Tagen mit je fünf Eingaben Selbstprotokolle erhoben. Dazu gehörten Settingmerkmale wie Ort und Tätigkeit, Befindlichkeit sowie zwei Aufmerksamkeitstests. Zusätzlich wurde ein abendlicher und ein morgendlicher Rückblick erhoben. Zwischen den Erhebungstagen und zwischen verschiedenen Tageszeiten ergaben sich Unterschiede, die teils als Übungs- und Gewöhnungseffekte, teils als zirkadiane Effekte interpretierbar sind. Rückblickend wird das Befinden negativer beurteilt, als es aus dem Mittelwert der einzelnen Protokolle zu erwarten war. Dieser negative Retrospektionseffekt war bei emotional labilen Personen stärker ausgeprägt. Diese Befunde und andere Vorzüge der computer-unterstützten Methodik legen eine breitere Anwendung nahe.


1960 ◽  
Vol 15 (2) ◽  
pp. 181-185
Author(s):  
Virginia O. Birdsall
Keyword(s):  
Oak Tree ◽  

2020 ◽  
pp. 1-1
Author(s):  
Fangbing Zhang ◽  
Tao Yang ◽  
Linfeng Liu ◽  
Bang Liang ◽  
Yi Bai ◽  
...  
Keyword(s):  

2021 ◽  
Vol 13 (9) ◽  
pp. 1619
Author(s):  
Bin Yan ◽  
Pan Fan ◽  
Xiaoyan Lei ◽  
Zhijie Liu ◽  
Fuzeng Yang

The apple target recognition algorithm is one of the core technologies of the apple picking robot. However, most of the existing apple detection algorithms cannot distinguish between the apples that are occluded by tree branches and occluded by other apples. The apples, grasping end-effector and mechanical picking arm of the robot are very likely to be damaged if the algorithm is directly applied to the picking robot. Based on this practical problem, in order to automatically recognize the graspable and ungraspable apples in an apple tree image, a light-weight apple targets detection method was proposed for picking robot using improved YOLOv5s. Firstly, BottleneckCSP module was improved designed to BottleneckCSP-2 module which was used to replace the BottleneckCSP module in backbone architecture of original YOLOv5s network. Secondly, SE module, which belonged to the visual attention mechanism network, was inserted to the proposed improved backbone network. Thirdly, the bonding fusion mode of feature maps, which were inputs to the target detection layer of medium size in the original YOLOv5s network, were improved. Finally, the initial anchor box size of the original network was improved. The experimental results indicated that the graspable apples, which were unoccluded or only occluded by tree leaves, and the ungraspable apples, which were occluded by tree branches or occluded by other fruits, could be identified effectively using the proposed improved network model in this study. Specifically, the recognition recall, precision, mAP and F1 were 91.48%, 83.83%, 86.75% and 87.49%, respectively. The average recognition time was 0.015 s per image. Contrasted with original YOLOv5s, YOLOv3, YOLOv4 and EfficientDet-D0 model, the mAP of the proposed improved YOLOv5s model increased by 5.05%, 14.95%, 4.74% and 6.75% respectively, the size of the model compressed by 9.29%, 94.6%, 94.8% and 15.3% respectively. The average recognition speeds per image of the proposed improved YOLOv5s model were 2.53, 1.13 and 3.53 times of EfficientDet-D0, YOLOv4 and YOLOv3 and model, respectively. The proposed method can provide technical support for the real-time accurate detection of multiple fruit targets for the apple picking robot.


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