麻豆精品无码av,欧美1区2区,久久中文字幕乱码人妻,亚洲欧美另类少妇精品,在线看黄射,69pao高清,九九九久久久国产精品,子操大逼1234区,九九爱99热精品

2
點(diǎn)贊
0
評(píng)論
0
轉(zhuǎn)載
收藏

一種改進(jìn)的交通標(biāo)志檢測(cè)小樣本學(xué)習(xí)模型

 HM-Net: An improved few-shot learning model for the detection of traffic signs 

 

 

Highlights

  • Inspired by hierarchical structures of images, this study designed a Hyperbolic Hierarchical Constraint (HHC) algorithm.
  • A Hyperbolic Relationship Metric (HRM) mechanism was proposed to introduce HHC algorithm into FSL models.
  • Based on HRM mechanism, a Hyperbolic Measurement Network (HM-Net) was designed for FSL task of traffic signs.
    Due to lighting intensity, shooting angle, and motion blur, many traffic sign images exhibit significant feature degradation, which greatly reduces the domain adaptation ability of deep learning models in practical scenarios. This phenomenon is more prominent in Few Shot Learning (FSL) with extremely limited data. To address this issue, this study proposes an improved FSL model. First, this study introduces hyperbolic space theory and designs a Hyperbolic Hierarchical Constraint (HHC) algorithm to acquire domain knowledge by leveraging neighborhood constraints in hyperbolic space. Then, a Hyperbolic Relationship Metric (HRM) mechanism based on the HHC algorithm is proposed to improve the model’s generalization ability across data samples. Finally, based on the HRM mechanism, an FSL model named Hyperbolic Measurement Network (HM-Net) is constructed for feature-degraded traffic sign images. For FSL tasks, HM-Net’s performance on the benchmark dataset exceeds that of existing models. For FSL-based traffic sign detection tasks, HM-Net achieves higher performance than existing models. In cross-domain experiments, HM-Net demonstrates stronger domain adaptation capability than existing models.
聲明:本內(nèi)容系學(xué)者網(wǎng)用戶個(gè)人學(xué)術(shù)動(dòng)態(tài)分享,不代表平臺(tái)立場(chǎng)。

SCHOLAT.com 學(xué)者網(wǎng)
免責(zé)聲明 | 關(guān)于我們 | 聯(lián)系我們
聯(lián)系我們:
返回頂部
水城县| 榆林市| 巫山县| 米易县| 舞钢市| 绥芬河市| 鄂尔多斯市| 辰溪县| 满洲里市| 彩票| 天峨县| 扎兰屯市| 渝北区| 阿荣旗| 汽车| 临沧市| 芜湖市| 太保市| 盐亭县| 星座| 分宜县| 瑞金市| 衡东县| 陵川县| 沁阳市| 开远市| 酉阳| 承德县| 浦东新区| 新兴县| 遵义市| 云南省| 肥乡县| 铁岭县| 济南市| 鄂州市| 凭祥市| 景洪市| 洛隆县| 马关县| 荔波县|