isthing
int64 0
1
| name
stringlengths 2
21
| id
int64 1
200
| color
sequence | supercategory
stringclasses 27
values |
|---|---|---|---|---|
1
|
person
| 1
|
[
220,
20,
60
] |
person
|
1
|
bicycle
| 2
|
[
119,
11,
32
] |
vehicle
|
1
|
car
| 3
|
[
0,
0,
142
] |
vehicle
|
1
|
motorcycle
| 4
|
[
0,
0,
230
] |
vehicle
|
1
|
airplane
| 5
|
[
106,
0,
228
] |
vehicle
|
1
|
bus
| 6
|
[
0,
60,
100
] |
vehicle
|
1
|
train
| 7
|
[
0,
80,
100
] |
vehicle
|
1
|
truck
| 8
|
[
0,
0,
70
] |
vehicle
|
1
|
boat
| 9
|
[
0,
0,
192
] |
vehicle
|
1
|
traffic light
| 10
|
[
250,
170,
30
] |
outdoor
|
1
|
fire hydrant
| 11
|
[
100,
170,
30
] |
outdoor
|
1
|
stop sign
| 13
|
[
220,
220,
0
] |
outdoor
|
1
|
parking meter
| 14
|
[
175,
116,
175
] |
outdoor
|
1
|
bench
| 15
|
[
250,
0,
30
] |
outdoor
|
1
|
bird
| 16
|
[
165,
42,
42
] |
animal
|
1
|
cat
| 17
|
[
255,
77,
255
] |
animal
|
1
|
dog
| 18
|
[
0,
226,
252
] |
animal
|
1
|
horse
| 19
|
[
182,
182,
255
] |
animal
|
1
|
sheep
| 20
|
[
0,
82,
0
] |
animal
|
1
|
cow
| 21
|
[
120,
166,
157
] |
animal
|
1
|
elephant
| 22
|
[
110,
76,
0
] |
animal
|
1
|
bear
| 23
|
[
174,
57,
255
] |
animal
|
1
|
zebra
| 24
|
[
199,
100,
0
] |
animal
|
1
|
giraffe
| 25
|
[
72,
0,
118
] |
animal
|
1
|
backpack
| 27
|
[
255,
179,
240
] |
accessory
|
1
|
umbrella
| 28
|
[
0,
125,
92
] |
accessory
|
1
|
handbag
| 31
|
[
209,
0,
151
] |
accessory
|
1
|
tie
| 32
|
[
188,
208,
182
] |
accessory
|
1
|
suitcase
| 33
|
[
0,
220,
176
] |
accessory
|
1
|
frisbee
| 34
|
[
255,
99,
164
] |
sports
|
1
|
skis
| 35
|
[
92,
0,
73
] |
sports
|
1
|
snowboard
| 36
|
[
133,
129,
255
] |
sports
|
1
|
sports ball
| 37
|
[
78,
180,
255
] |
sports
|
1
|
kite
| 38
|
[
0,
228,
0
] |
sports
|
1
|
baseball bat
| 39
|
[
174,
255,
243
] |
sports
|
1
|
baseball glove
| 40
|
[
45,
89,
255
] |
sports
|
1
|
skateboard
| 41
|
[
134,
134,
103
] |
sports
|
1
|
surfboard
| 42
|
[
145,
148,
174
] |
sports
|
1
|
tennis racket
| 43
|
[
255,
208,
186
] |
sports
|
1
|
bottle
| 44
|
[
197,
226,
255
] |
kitchen
|
1
|
wine glass
| 46
|
[
171,
134,
1
] |
kitchen
|
1
|
cup
| 47
|
[
109,
63,
54
] |
kitchen
|
1
|
fork
| 48
|
[
207,
138,
255
] |
kitchen
|
1
|
knife
| 49
|
[
151,
0,
95
] |
kitchen
|
1
|
spoon
| 50
|
[
9,
80,
61
] |
kitchen
|
1
|
bowl
| 51
|
[
84,
105,
51
] |
kitchen
|
1
|
banana
| 52
|
[
74,
65,
105
] |
food
|
1
|
apple
| 53
|
[
166,
196,
102
] |
food
|
1
|
sandwich
| 54
|
[
208,
195,
210
] |
food
|
1
|
orange
| 55
|
[
255,
109,
65
] |
food
|
1
|
broccoli
| 56
|
[
0,
143,
149
] |
food
|
1
|
carrot
| 57
|
[
179,
0,
194
] |
food
|
1
|
hot dog
| 58
|
[
209,
99,
106
] |
food
|
1
|
pizza
| 59
|
[
5,
121,
0
] |
food
|
1
|
donut
| 60
|
[
227,
255,
205
] |
food
|
1
|
cake
| 61
|
[
147,
186,
208
] |
food
|
1
|
chair
| 62
|
[
153,
69,
1
] |
furniture
|
1
|
couch
| 63
|
[
3,
95,
161
] |
furniture
|
1
|
potted plant
| 64
|
[
163,
255,
0
] |
furniture
|
1
|
bed
| 65
|
[
119,
0,
170
] |
furniture
|
1
|
dining table
| 67
|
[
0,
182,
199
] |
furniture
|
1
|
toilet
| 70
|
[
0,
165,
120
] |
furniture
|
1
|
tv
| 72
|
[
183,
130,
88
] |
electronic
|
1
|
laptop
| 73
|
[
95,
32,
0
] |
electronic
|
1
|
mouse
| 74
|
[
130,
114,
135
] |
electronic
|
1
|
remote
| 75
|
[
110,
129,
133
] |
electronic
|
1
|
keyboard
| 76
|
[
166,
74,
118
] |
electronic
|
1
|
cell phone
| 77
|
[
219,
142,
185
] |
electronic
|
1
|
microwave
| 78
|
[
79,
210,
114
] |
appliance
|
1
|
oven
| 79
|
[
178,
90,
62
] |
appliance
|
1
|
toaster
| 80
|
[
65,
70,
15
] |
appliance
|
1
|
sink
| 81
|
[
127,
167,
115
] |
appliance
|
1
|
refrigerator
| 82
|
[
59,
105,
106
] |
appliance
|
1
|
book
| 84
|
[
142,
108,
45
] |
indoor
|
1
|
clock
| 85
|
[
196,
172,
0
] |
indoor
|
1
|
vase
| 86
|
[
95,
54,
80
] |
indoor
|
1
|
scissors
| 87
|
[
128,
76,
255
] |
indoor
|
1
|
teddy bear
| 88
|
[
201,
57,
1
] |
indoor
|
1
|
hair drier
| 89
|
[
246,
0,
122
] |
indoor
|
1
|
toothbrush
| 90
|
[
191,
162,
208
] |
indoor
|
0
|
banner
| 92
|
[
255,
255,
128
] |
textile
|
0
|
blanket
| 93
|
[
147,
211,
203
] |
textile
|
0
|
bridge
| 95
|
[
150,
100,
100
] |
building
|
0
|
cardboard
| 100
|
[
168,
171,
172
] |
raw-material
|
0
|
counter
| 107
|
[
146,
112,
198
] |
furniture-stuff
|
0
|
curtain
| 109
|
[
210,
170,
100
] |
textile
|
0
|
door-stuff
| 112
|
[
92,
136,
89
] |
furniture-stuff
|
0
|
floor-wood
| 118
|
[
218,
88,
184
] |
floor
|
0
|
flower
| 119
|
[
241,
129,
0
] |
plant
|
0
|
fruit
| 122
|
[
217,
17,
255
] |
food-stuff
|
0
|
gravel
| 125
|
[
124,
74,
181
] |
ground
|
0
|
house
| 128
|
[
70,
70,
70
] |
building
|
0
|
light
| 130
|
[
255,
228,
255
] |
furniture-stuff
|
0
|
mirror-stuff
| 133
|
[
154,
208,
0
] |
furniture-stuff
|
0
|
net
| 138
|
[
193,
0,
92
] |
structural
|
0
|
pillow
| 141
|
[
76,
91,
113
] |
textile
|
0
|
platform
| 144
|
[
255,
180,
195
] |
ground
|
0
|
playingfield
| 145
|
[
106,
154,
176
] |
ground
|
0
|
railroad
| 147
|
[
230,
150,
140
] |
ground
|
0
|
river
| 148
|
[
60,
143,
255
] |
water
|
End of preview. Expand
in Data Studio
No dataset card yet
- Downloads last month
- 22