Journal on Communications ›› 2019, Vol. 40 ›› Issue (7): 114-125.doi: 10.11959/j.issn.1000-436x.2019167
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Xin ZHOU,Xiaoxin HE,Changwen ZHENG
Revised:
2019-04-11
Online:
2019-07-25
Published:
2019-07-30
Supported by:
CLC Number:
Xin ZHOU,Xiaoxin HE,Changwen ZHENG. Radio signal recognition based on image deep learning[J]. Journal on Communications, 2019, 40(7): 114-125.
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层名称 | 输入尺寸 | 尺寸/步进 | 卷积核数 |
conv1 | 512×512 | 3×3 / 1×1 | 32 |
maxpool1 | 512×512 | 2×2 / 2×2 | — |
conv2 | 256×256 | 3×3 / 1×1 | 64 |
maxpool2 | 256×256 | 2×2 / 2×2 | — |
conv3 | 128×128 | 3×3 / 1×1 | 128 |
conv4 | 128×128 | 1×1 / 1×1 | 64 |
conv5 | 128×128 | 3×3 / 1×1 | 128 |
maxpool3 | 128×128 | 2×2 / 2×2 | — |
conv6 | 64×64 | 3×3 / 1×1 | 256 |
conv7 | 64×64 | 1×1 / 1×1 | 128 |
conv8 | 64×64 | 3×3 / 1×1 | 256 |
maxpool4 | 64×64 | 2×2 / 2×2 | — |
conv9 | 32×32 | 3×3 / 1×1 | 512 |
conv10 | 32×32 | 1×1 / 1×1 | 256 |
conv11 | 32×32 | 3×3 / 1×1 | 512 |
conv12 | 32×32 | 1×1 / 1×1 | 256 |
conv13 | 32×32 | 3×3 / 1×1 | 512 |
maxpool5 | 32×32 | 2×2 / 2×2 | — |
conv14 | 16×16 | 3×3 / 1×1 | 1 024 |
conv15 | 16×16 | 1×1 / 1×1 | 512 |
conv16 | 16×16 | 3×3 / 1×1 | 1 024 |
conv17 | 16×16 | 1×1 / 1×1 | 512 |
conv18 | 16×16 | 3×3 / 1×1 | 1 024 |
conv19 | 16×16 | 3×3 / 1×1 | 1 024 |
conv20 | 16×16 | 3×3 / 1×1 | 1 024 |
conv21 | 32×32 | 1×1 / 1×1 | 64 |
reshape1 | 32×32 | 2×2 | 256 |
concatenate1 | 16×16 | — | 1 280 |
conv22 | 16×16 | 3×3 / 1×1 | 1 024 |
conv23 | 16×16 | 1×1 / 1×1 | 85 |
"
频率范围/MHz | 信号名称 |
870~885 | Tele2G_DL_CDMA |
935~955 | Mobi2G_DL_GSM900 |
955~960 | Uni2G_DL_GSM900 |
1 805~1 820 | Mobi2G_DL_GSM1800 |
1 840~1 860 | Uni4G_DL_FDD1800 |
1 860~1 875 | Tele4G_DL_FDD1800 |
1 885~1 905 | Mobi4G_TDLTE_20M |
1 905~1 915 | Mobi4G_TDLTE_10M |
2 010~2 025 | Mobi3G_TDSCDMA |
2 110~2 130 | Tele4G_DL_FDD2100 |
2 130~2 135 | Uni3G_DL_WCDMA |
2 135~2 140 | Uni3G_DL_WCDMA |
2 140~2 155 | Uni4G_DL_FDD2100 |
2 575~2 595 | Mobi4G_TDLTE_20M |
2 595~2 615 | Mobi4G_TDLTE_20M |
2 615~2 635 | Mobi4G_TDLTE_20M |
"
序号 | 信号名称 | 精准率 | 召回率 | AP值 |
1 | Tele2G_DL_CDMA | 100% | 98% | 97.67 |
2 | Mobi2G_DL_GSM900 | 100% | 95% | 95.35 |
3 | Uni2G_DL_GSM900 | 100% | 92% | 92.31 |
4 | Mobi2G_DL_GSM1800 | 100% | 93% | 93.02 |
5 | Uni3G_DL_WCDMA | 100% | 100% | 100 |
6 | Mobi3G_TDSCDMA | 30% | 62% | 45.76 |
7 | Uni4G_DL_FDD1800 | 100% | 26% | 26.02 |
8 | Uni4G_DL_FDD2100 | 94% | 60% | 58.50 |
9 | Tele4G_DL_FDD1800 | 72% | 98% | 85.09 |
10 | Tele4G_DL_FDD2100 | 54% | 99% | 55.02 |
11 | Mobi4G_TDLTE_20M | 94% | 84% | 83.91 |
12 | Mobi4G_TDLTE_10M | 93% | 100% | 99.92 |
平均 | mAP | — | — | 77.72 |
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