Scientia Silvae Sinicae ›› 2023, Vol. 59 ›› Issue (8): 112-122.doi: 10.11707/j.1001-7488.LYKX20220378
• Research papers • Previous Articles Next Articles
Jiandong Qi1,2,Zhongtian Ma1,Dehuai Zhang3,Yun Tian4
Received:
2022-05-31
Online:
2023-08-25
Published:
2023-10-16
CLC Number:
Jiandong Qi,Zhongtian Ma,Dehuai Zhang,Yun Tian. Wildlife Image Recognition in Miyun District Based on BS-ResNeXt-50[J]. Scientia Silvae Sinicae, 2023, 59(8): 112-122.
Table 2
Set of species selected from CCT dataset"
物种 Species | 图像数量 Image number |
负鼠 Opossum | 16479 |
郊狼 Coyote | 16306 |
兔 Rabbit | 12315 |
鹿 Deer | 12191 |
浣熊 Raccoon | 10888 |
鸟 Bird | 9501 |
山猫 Bobcat | 7597 |
猫 Cat | 5163 |
松鼠 Squirrel | 4430 |
啮齿动物(不含松鼠) Rodent (Squirrel exclusion) | 4273 |
奶牛 Cow | 3626 |
狗 Dog | 3608 |
狐狸 Fox | 2574 |
臭鼬 Skunk | 1892 |
Table 3
Results of different enhancement schemes in self-built dataset"
物种 Species | 模型准确率Model accuracy(%) | |||
ResNeXt-50 | SE-ResNeXt-50 | BP-ResNeXt-50 | BS-ResNeXt-50 | |
猪獾 Hog badger | 65.2 | 68.9 | 67.4 | 73.2 |
鸟 Bird | 81.5 | 84.7 | 85.3 | 88.7 |
野猪 Boar | 66.4 | 71.3 | 67.1 | 72.5 |
豹猫 Leopard cat | 63.7 | 65.4 | 63.7 | 70.2 |
狍 Roe deer | 86.6 | 91.3 | 89.2 | 93.2 |
山羊 Goat | 78.9 | 80.5 | 80.2 | 83.6 |
兔子 Rabbit | 66.8 | 68.5 | 69.1 | 70.4 |
松鼠 Squirrel | 66.2 | 70.7 | 67.9 | 72.5 |
Table 4
Classification results of various species by different models in CCT dataset"
物种 Species | 模型准确率 Model accuracy(%) | |||||
VGG16 | EfficientNet-B0 | InceptionV3 | DenseNet-121 | ResNeXt-50 | BS-ResNeXt-50 | |
鸟 Bird | 89.0 | 93.8 | 96.2 | 95.9 | 96.4 | 96.5 |
山猫 Bobcat | 84.3 | 87.3 | 88.8 | 91.2 | 91.0 | 95.0 |
猫 Cat | 86.8 | 92.5 | 93.2 | 95.6 | 94.0 | 97.6 |
奶牛 Cow | 92.3 | 95.5 | 96.5 | 96.7 | 97.3 | 97.3 |
郊狼 Coyote | 86.4 | 91.4 | 92.5 | 93.7 | 92.3 | 95.5 |
鹿 Deer | 90.6 | 95.2 | 98.1 | 96.3 | 98.0 | 98.6 |
狗 Dog | 80.1 | 88.5 | 90.2 | 93.0 | 92.9 | 93.3 |
狐狸 Fox | 85.5 | 89.1 | 90.7 | 90.2 | 88.7 | 92.8 |
负鼠 Opossum | 90.2 | 86.4 | 85.7 | 94.9 | 93.0 | 96.1 |
兔 Rabbit | 83.0 | 90.4 | 92.3 | 93.7 | 93.2 | 94.5 |
浣熊 Raccoon | 85.7 | 91.2 | 90.2 | 92.8 | 92.5 | 95.0 |
啮齿动物(不含松鼠) Rodent (Squirrel exclusion) | 85.9 | 88.2 | 90.5 | 94.8 | 94.3 | 95.6 |
臭鼬 Skunk | 78.8 | 83.3 | 84.0 | 85.0 | 86.9 | 88.9 |
松鼠 Squirrel | 78.4 | 90.5 | 90.5 | 93.1 | 93.2 | 94.4 |
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