000 03050nam a22003137a 4500
003 KOHA_MİRAKIL
005 20211203112827.0
008 211203d2021 cy ||||| m||| 00| 0 eng d
040 _aCY-NiCIU
_beng
_cCY-NiCIU
_erda
041 _aeng
090 _aD 267
_bM94 2021
100 1 _aMuhammed, Salisu
245 1 2 _aA DEEPGAIT FEATURE EXTRACTION VIA MAXIMUM ACTIVATED CHANNEL LOCALIZATION AND ANALYTICAL STUDY ON MULTI-VIEW LARGE POPULATION GAIT DATASETS /
_cSALISU MUHAMMED; SUPERVISOR: ASSOC. PROF. DR. ERBUĞ ÇELEBI
246 2 3 _aA STUDY OF PUBLIC SECTORS IN ERBIL
264 _c2021
300 _a103 sheets;
_c31 cm.
_eIncludes CD
336 _2rdacontent
_atext
_btxt
337 _2rdamedia
_aunmediated
_bn
338 _2rdacarrier
_avolume
_bnc
502 _aThesis (PhD) - Cyprus International University. Institute of Graduate Studies and Research Computer Engineering Department
504 _aIncludes bibliography (sheets 99-103)
520 _aABSTRACT In this study, a novel maximum activated channel localization framework was created for extracting DeepGait features. In addition, as the models with fewer operations help realize the performance of intelligent computing systems, a Channel-Activated Mapping Network (CAMNet) for DeepGait feature extraction with less operation without dimension decomposition was proposed. More explicitly, the CAMNet is composed of an improved GEINet (three progressive triplets of convolution, batch normalization, and ReLu layers and then two internal max-pooling layers), an external max-pooling to capture the Spatio-temporal information of multiple frames in one gait period. We conducted experiments to validate the effectiveness of the proposed novel algorithm in terms of cross-view gait recognition in both cooperative and uncooperative settings using the state-of-the-art Osaka University Multi-View Large Population OU-MVLP dataset. The OU-MVLP dataset includes 10,307 subjects. As a result, we confirmed that the CAMNet+KNN significantly outperformed state-of-the-art approaches using the same dataset at the rear angles of 180, 195, 210, and 225, in both cooperative and uncooperative settings. The study also gives a comprehensive insight into the natural adversaries found in a multi-view large population dataset. Based on the analyses carried out on the OU-MVLP dataset, we have found that capturing gait frames at view angles 45o gives an equal number of frames in multiple sequences. However, 30o is the second view angle that also gives an equal number of frames in multiple sequences. In terms of age groups, 9-12 is the group that was found to have a higher percentage of subjects with an equal number of frames among the two sequences.
650 0 _aData sets
_vDissertations, Academic
650 0 _aComputer algorithms
_vDissertations, Academic
650 0 _aComputer engineering
_vDissertations, Academic
700 1 _aÇelebi, Erbuğ
_esupervisor
_91665
942 _2ddc
_cTS
999 _c283413
_d283413