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  1. .gitattributes +1 -0
  2. PreTrained_coco.names +80 -0
  3. PreTrained_yolov4.cfg +1157 -0
  4. yolov4.weights +3 -0
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+ chair
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+ [convolutional]
646
+ batch_normalize=1
647
+ filters=512
648
+ size=1
649
+ stride=1
650
+ pad=1
651
+ activation=mish
652
+
653
+ [convolutional]
654
+ batch_normalize=1
655
+ filters=512
656
+ size=3
657
+ stride=1
658
+ pad=1
659
+ activation=mish
660
+
661
+ [shortcut]
662
+ from=-3
663
+ activation=linear
664
+
665
+ [convolutional]
666
+ batch_normalize=1
667
+ filters=512
668
+ size=1
669
+ stride=1
670
+ pad=1
671
+ activation=mish
672
+
673
+ [convolutional]
674
+ batch_normalize=1
675
+ filters=512
676
+ size=3
677
+ stride=1
678
+ pad=1
679
+ activation=mish
680
+
681
+ [shortcut]
682
+ from=-3
683
+ activation=linear
684
+
685
+ [convolutional]
686
+ batch_normalize=1
687
+ filters=512
688
+ size=1
689
+ stride=1
690
+ pad=1
691
+ activation=mish
692
+
693
+ [convolutional]
694
+ batch_normalize=1
695
+ filters=512
696
+ size=3
697
+ stride=1
698
+ pad=1
699
+ activation=mish
700
+
701
+ [shortcut]
702
+ from=-3
703
+ activation=linear
704
+
705
+ [convolutional]
706
+ batch_normalize=1
707
+ filters=512
708
+ size=1
709
+ stride=1
710
+ pad=1
711
+ activation=mish
712
+
713
+ [convolutional]
714
+ batch_normalize=1
715
+ filters=512
716
+ size=3
717
+ stride=1
718
+ pad=1
719
+ activation=mish
720
+
721
+ [shortcut]
722
+ from=-3
723
+ activation=linear
724
+
725
+ [convolutional]
726
+ batch_normalize=1
727
+ filters=512
728
+ size=1
729
+ stride=1
730
+ pad=1
731
+ activation=mish
732
+
733
+ [route]
734
+ layers = -1,-16
735
+
736
+ [convolutional]
737
+ batch_normalize=1
738
+ filters=1024
739
+ size=1
740
+ stride=1
741
+ pad=1
742
+ activation=mish
743
+
744
+ ##########################
745
+
746
+ [convolutional]
747
+ batch_normalize=1
748
+ filters=512
749
+ size=1
750
+ stride=1
751
+ pad=1
752
+ activation=leaky
753
+
754
+ [convolutional]
755
+ batch_normalize=1
756
+ size=3
757
+ stride=1
758
+ pad=1
759
+ filters=1024
760
+ activation=leaky
761
+
762
+ [convolutional]
763
+ batch_normalize=1
764
+ filters=512
765
+ size=1
766
+ stride=1
767
+ pad=1
768
+ activation=leaky
769
+
770
+ ### SPP ###
771
+ [maxpool]
772
+ stride=1
773
+ size=5
774
+
775
+ [route]
776
+ layers=-2
777
+
778
+ [maxpool]
779
+ stride=1
780
+ size=9
781
+
782
+ [route]
783
+ layers=-4
784
+
785
+ [maxpool]
786
+ stride=1
787
+ size=13
788
+
789
+ [route]
790
+ layers=-1,-3,-5,-6
791
+ ### End SPP ###
792
+
793
+ [convolutional]
794
+ batch_normalize=1
795
+ filters=512
796
+ size=1
797
+ stride=1
798
+ pad=1
799
+ activation=leaky
800
+
801
+ [convolutional]
802
+ batch_normalize=1
803
+ size=3
804
+ stride=1
805
+ pad=1
806
+ filters=1024
807
+ activation=leaky
808
+
809
+ [convolutional]
810
+ batch_normalize=1
811
+ filters=512
812
+ size=1
813
+ stride=1
814
+ pad=1
815
+ activation=leaky
816
+
817
+ [convolutional]
818
+ batch_normalize=1
819
+ filters=256
820
+ size=1
821
+ stride=1
822
+ pad=1
823
+ activation=leaky
824
+
825
+ [upsample]
826
+ stride=2
827
+
828
+ [route]
829
+ layers = 85
830
+
831
+ [convolutional]
832
+ batch_normalize=1
833
+ filters=256
834
+ size=1
835
+ stride=1
836
+ pad=1
837
+ activation=leaky
838
+
839
+ [route]
840
+ layers = -1, -3
841
+
842
+ [convolutional]
843
+ batch_normalize=1
844
+ filters=256
845
+ size=1
846
+ stride=1
847
+ pad=1
848
+ activation=leaky
849
+
850
+ [convolutional]
851
+ batch_normalize=1
852
+ size=3
853
+ stride=1
854
+ pad=1
855
+ filters=512
856
+ activation=leaky
857
+
858
+ [convolutional]
859
+ batch_normalize=1
860
+ filters=256
861
+ size=1
862
+ stride=1
863
+ pad=1
864
+ activation=leaky
865
+
866
+ [convolutional]
867
+ batch_normalize=1
868
+ size=3
869
+ stride=1
870
+ pad=1
871
+ filters=512
872
+ activation=leaky
873
+
874
+ [convolutional]
875
+ batch_normalize=1
876
+ filters=256
877
+ size=1
878
+ stride=1
879
+ pad=1
880
+ activation=leaky
881
+
882
+ [convolutional]
883
+ batch_normalize=1
884
+ filters=128
885
+ size=1
886
+ stride=1
887
+ pad=1
888
+ activation=leaky
889
+
890
+ [upsample]
891
+ stride=2
892
+
893
+ [route]
894
+ layers = 54
895
+
896
+ [convolutional]
897
+ batch_normalize=1
898
+ filters=128
899
+ size=1
900
+ stride=1
901
+ pad=1
902
+ activation=leaky
903
+
904
+ [route]
905
+ layers = -1, -3
906
+
907
+ [convolutional]
908
+ batch_normalize=1
909
+ filters=128
910
+ size=1
911
+ stride=1
912
+ pad=1
913
+ activation=leaky
914
+
915
+ [convolutional]
916
+ batch_normalize=1
917
+ size=3
918
+ stride=1
919
+ pad=1
920
+ filters=256
921
+ activation=leaky
922
+
923
+ [convolutional]
924
+ batch_normalize=1
925
+ filters=128
926
+ size=1
927
+ stride=1
928
+ pad=1
929
+ activation=leaky
930
+
931
+ [convolutional]
932
+ batch_normalize=1
933
+ size=3
934
+ stride=1
935
+ pad=1
936
+ filters=256
937
+ activation=leaky
938
+
939
+ [convolutional]
940
+ batch_normalize=1
941
+ filters=128
942
+ size=1
943
+ stride=1
944
+ pad=1
945
+ activation=leaky
946
+
947
+ ##########################
948
+
949
+ [convolutional]
950
+ batch_normalize=1
951
+ size=3
952
+ stride=1
953
+ pad=1
954
+ filters=256
955
+ activation=leaky
956
+
957
+ [convolutional]
958
+ size=1
959
+ stride=1
960
+ pad=1
961
+ filters=255
962
+ activation=linear
963
+
964
+
965
+ [yolo]
966
+ mask = 0,1,2
967
+ anchors = 12, 16, 19, 36, 40, 28, 36, 75, 76, 55, 72, 146, 142, 110, 192, 243, 459, 401
968
+ classes=80
969
+ num=9
970
+ jitter=.3
971
+ ignore_thresh = .7
972
+ truth_thresh = 1
973
+ scale_x_y = 1.2
974
+ iou_thresh=0.213
975
+ cls_normalizer=1.0
976
+ iou_normalizer=0.07
977
+ iou_loss=ciou
978
+ nms_kind=greedynms
979
+ beta_nms=0.6
980
+ max_delta=5
981
+
982
+
983
+ [route]
984
+ layers = -4
985
+
986
+ [convolutional]
987
+ batch_normalize=1
988
+ size=3
989
+ stride=2
990
+ pad=1
991
+ filters=256
992
+ activation=leaky
993
+
994
+ [route]
995
+ layers = -1, -16
996
+
997
+ [convolutional]
998
+ batch_normalize=1
999
+ filters=256
1000
+ size=1
1001
+ stride=1
1002
+ pad=1
1003
+ activation=leaky
1004
+
1005
+ [convolutional]
1006
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1007
+ size=3
1008
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1009
+ pad=1
1010
+ filters=512
1011
+ activation=leaky
1012
+
1013
+ [convolutional]
1014
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1015
+ filters=256
1016
+ size=1
1017
+ stride=1
1018
+ pad=1
1019
+ activation=leaky
1020
+
1021
+ [convolutional]
1022
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1023
+ size=3
1024
+ stride=1
1025
+ pad=1
1026
+ filters=512
1027
+ activation=leaky
1028
+
1029
+ [convolutional]
1030
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1031
+ filters=256
1032
+ size=1
1033
+ stride=1
1034
+ pad=1
1035
+ activation=leaky
1036
+
1037
+ [convolutional]
1038
+ batch_normalize=1
1039
+ size=3
1040
+ stride=1
1041
+ pad=1
1042
+ filters=512
1043
+ activation=leaky
1044
+
1045
+ [convolutional]
1046
+ size=1
1047
+ stride=1
1048
+ pad=1
1049
+ filters=255
1050
+ activation=linear
1051
+
1052
+
1053
+ [yolo]
1054
+ mask = 3,4,5
1055
+ anchors = 12, 16, 19, 36, 40, 28, 36, 75, 76, 55, 72, 146, 142, 110, 192, 243, 459, 401
1056
+ classes=80
1057
+ num=9
1058
+ jitter=.3
1059
+ ignore_thresh = .7
1060
+ truth_thresh = 1
1061
+ scale_x_y = 1.1
1062
+ iou_thresh=0.213
1063
+ cls_normalizer=1.0
1064
+ iou_normalizer=0.07
1065
+ iou_loss=ciou
1066
+ nms_kind=greedynms
1067
+ beta_nms=0.6
1068
+ max_delta=5
1069
+
1070
+
1071
+ [route]
1072
+ layers = -4
1073
+
1074
+ [convolutional]
1075
+ batch_normalize=1
1076
+ size=3
1077
+ stride=2
1078
+ pad=1
1079
+ filters=512
1080
+ activation=leaky
1081
+
1082
+ [route]
1083
+ layers = -1, -37
1084
+
1085
+ [convolutional]
1086
+ batch_normalize=1
1087
+ filters=512
1088
+ size=1
1089
+ stride=1
1090
+ pad=1
1091
+ activation=leaky
1092
+
1093
+ [convolutional]
1094
+ batch_normalize=1
1095
+ size=3
1096
+ stride=1
1097
+ pad=1
1098
+ filters=1024
1099
+ activation=leaky
1100
+
1101
+ [convolutional]
1102
+ batch_normalize=1
1103
+ filters=512
1104
+ size=1
1105
+ stride=1
1106
+ pad=1
1107
+ activation=leaky
1108
+
1109
+ [convolutional]
1110
+ batch_normalize=1
1111
+ size=3
1112
+ stride=1
1113
+ pad=1
1114
+ filters=1024
1115
+ activation=leaky
1116
+
1117
+ [convolutional]
1118
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1119
+ filters=512
1120
+ size=1
1121
+ stride=1
1122
+ pad=1
1123
+ activation=leaky
1124
+
1125
+ [convolutional]
1126
+ batch_normalize=1
1127
+ size=3
1128
+ stride=1
1129
+ pad=1
1130
+ filters=1024
1131
+ activation=leaky
1132
+
1133
+ [convolutional]
1134
+ size=1
1135
+ stride=1
1136
+ pad=1
1137
+ filters=255
1138
+ activation=linear
1139
+
1140
+
1141
+ [yolo]
1142
+ mask = 6,7,8
1143
+ anchors = 12, 16, 19, 36, 40, 28, 36, 75, 76, 55, 72, 146, 142, 110, 192, 243, 459, 401
1144
+ classes=80
1145
+ num=9
1146
+ jitter=.3
1147
+ ignore_thresh = .7
1148
+ truth_thresh = 1
1149
+ random=1
1150
+ scale_x_y = 1.05
1151
+ iou_thresh=0.213
1152
+ cls_normalizer=1.0
1153
+ iou_normalizer=0.07
1154
+ iou_loss=ciou
1155
+ nms_kind=greedynms
1156
+ beta_nms=0.6
1157
+ max_delta=5
yolov4.weights ADDED
@@ -0,0 +1,3 @@
 
 
 
 
1
+ version https://git-lfs.github.com/spec/v1
2
+ oid sha256:e8a4f6c62188738d86dc6898d82724ec0964d0eb9d2ae0f0a9d53d65d108d562
3
+ size 257717640