电子科技大学学报
電子科技大學學報
전자과기대학학보
Journal of University of Electronic Science and Technology of China
2015年
5期
743-748
,共6页
代数多重网格%特征提取%图像重建%物体识别%物联网
代數多重網格%特徵提取%圖像重建%物體識彆%物聯網
대수다중망격%특정제취%도상중건%물체식별%물련망
algebraic multigrid%feature extraction%image reconstruction%object recognition%the internet of things
物联网中的物体识别可以减少人为的参与,提高物物相连的效率。该文针对物联网环境中的物体识别进行了初步研究,提出了一种结合代数多重网格的物体识别的方法,降低了物理存储和网络传输的代价。首先运用代数多重网格方法对不同模糊程度的图像进行重建,在此基础上进行特征检测;然后运用“词袋”模型对使用了代数多重网格方法与未使用该方法的物体识别进行了对比试验。实验结果表明,运用一定程度的模糊图像识别物体能得到较高的稳定性,并且提升了与非同一场景的物体识别的区分度;运用代数多重网格方法的“词袋”模型提高了物体识别的准确率。
物聯網中的物體識彆可以減少人為的參與,提高物物相連的效率。該文針對物聯網環境中的物體識彆進行瞭初步研究,提齣瞭一種結閤代數多重網格的物體識彆的方法,降低瞭物理存儲和網絡傳輸的代價。首先運用代數多重網格方法對不同模糊程度的圖像進行重建,在此基礎上進行特徵檢測;然後運用“詞袋”模型對使用瞭代數多重網格方法與未使用該方法的物體識彆進行瞭對比試驗。實驗結果錶明,運用一定程度的模糊圖像識彆物體能得到較高的穩定性,併且提升瞭與非同一場景的物體識彆的區分度;運用代數多重網格方法的“詞袋”模型提高瞭物體識彆的準確率。
물련망중적물체식별가이감소인위적삼여,제고물물상련적효솔。해문침대물련망배경중적물체식별진행료초보연구,제출료일충결합대수다중망격적물체식별적방법,강저료물리존저화망락전수적대개。수선운용대수다중망격방법대불동모호정도적도상진행중건,재차기출상진행특정검측;연후운용“사대”모형대사용료대수다중망격방법여미사용해방법적물체식별진행료대비시험。실험결과표명,운용일정정도적모호도상식별물체능득도교고적은정성,병차제승료여비동일장경적물체식별적구분도;운용대수다중망격방법적“사대”모형제고료물체식별적준학솔。
Object recognition in the Internet of things (IOT) can make the connection of objects easier by reducing the participation of the people significantly. Because of the particularity of IOT, how to reduce the storage and network transmission cost is an important research topic. In this paper, algebraic multigrid method is proposed to reduce the storage and network transmission costs in the application of object recognition under the environment of IOT. Firstly, the coarse grid data extracted by algebraic multi-grid (AMG) method is reconstructed, then the features are detected for object recognition, and finally, an object recognition experiment is provided by the "bag of words" model in the images reconstructed with and without the algebraic multi-grid method. The experimental results show that the "bag of words" model with algebraic multi-grid method can recognize the blurred objects more steadily than the model without algebraic multi-grid method, and the distinguish degree is improved between the same scenes and the different ones by the method of AMG. Therefore, AMG method can be used as a new feature extraction method in object recognition under the IOT environment.