亚洲一区欧美在线,日韩欧美视频免费观看,色戒的三场床戏分别是在几段,欧美日韩国产在线人成

基于EnlightenGAN圖像增強的自然場景下蘋果檢測方法
作者:
作者單位:

作者簡介:

通訊作者:

中圖分類號:

基金項目:

國家重點研發(fā)計劃項目(2019YFD1002401)


Application of Image Enhancement Technology Based on EnlightenGAN in Apple Detection in Natural Scenes
Author:
Affiliation:

Fund Project:

  • 摘要
  • |
  • 圖/表
  • |
  • 訪問統(tǒng)計
  • |
  • 參考文獻
  • |
  • 相似文獻
  • |
  • 引證文獻
  • |
  • 資源附件
  • |
  • 文章評論
    摘要:

    自然光照下陰影會降低采摘機器人視覺系統(tǒng)對蘋果目標的準確感知能力,導致采摘效率低。本研究采用EnlightenGAN算法進行圖像增強,以實現(xiàn)陰影的去除和蘋果目標檢測精度的提升。首先通過圖像光照歸一化處理得到自正則化注意力圖,達到圖像陰影檢測的目的,再采用注意力引導的U-Net作為生成器骨干網(wǎng)絡(luò)得到增強后的圖像,然后通過全局-局部判別器來比對圖像信息,最終在生成器和判別器的對抗中達到圖像質(zhì)量增強的效果。為了進一步檢驗該方法的陰影去除效果,分別采用EnlightenGAN、Zero_DCE、Adaptive_GAMMA、RUAS等算法在MinneApple公共數(shù)據(jù)集上進行試驗驗證。結(jié)果表明,EnlightenGAN算法均方誤差較Zero_DCE、Adaptive_GAMMA、RUAS算法分別降低19.21%、59.47%、67.42%,峰值信噪比增加6.26%、34.55%、47.27%,結(jié)構(gòu)相似度提高2.99%、23.21%、68.29%。同時,在對果園拍攝的蘋果圖像進行標注后,將其送入YOLO v5m目標檢測網(wǎng)絡(luò)進行蘋果檢測訓練。并對EnlightenGAN算法增強前后的蘋果圖像進行了測試,圖像增強前后檢測精確率分別為97.38%、98.37%,召回率分別為74.74%、91.37%,F(xiàn)1值分別為84%、94%,精確率、召回率和F1值分別提升1.02%、22.25%、11.90%。為證明模型有效性,對不同數(shù)據(jù)集進行了試驗,結(jié)果表明EnlightenGAN算法增強后的目標檢測精確率、召回率和F1值較無增強算法及Zero_DCE、Adaptive_GAMMA、RUAS算法有顯著提升。由此可知,將EnlightenGAN算法應(yīng)用于蘋果采摘機器人的視覺系統(tǒng),可以有效克服果園圖像光照不均以及存在陰影的影響,提升果實目標檢測性能。該研究可為自然條件下復雜光照環(huán)境中的果實檢測提供借鑒。

    Abstract:

    Under natural light conditions, the presence of shadows reduced the accurate perception ability of apple harvesting robot towards apple targets, leading to low picking efficiency. Therefore, an EnlightenGAN algorithm for image enhancement was proposed, which effectively improved the accuracy of shadow removal and apple object detection. This algorithm first obtained a self-regularized attention map through image lighting standardization to achieve image shadow detection. Next, an attention-guided U-Net was used as the backbone network of the generator to obtain the enhanced image. Then, the information before and after enhancement was compared using a global-local discriminator, and image enhancement was ultimately achieved in the confrontation between the generator and discriminator. To further evaluate the effectiveness of the proposed method, EnlightenGAN, Zero_DCE, Adaptive_GAMMA, and RUAS algorithms were tested on the publicly available MinneApple dataset. Compared with Zero_DCE, Adaptive_GAMMA, and RUAS algorithms, the MSE of EnlightenGAN algorithm was decreased by 19.21%, 59.47%, and 67.42%, respectively, while the PSNR was increased by 6.26%, 34.55%, and 47.27%, respectively. The SSIM was increased by 2.99%, 23.21%, and 68.29%, respectively. The detection P of EnlightenGAN algorithm before and after enhancement were 97.38% and 98.37%, respectively, with R of 74.74% and 91.37%. The F1 score were 84% and 94%, respectively. The precision, recall, and F1 score were improved by 1.02%, 22.25%, and 11.90%, respectively. In order to verify the effectiveness of the model, different datasets were tested, and the results showed that the target detection precision, recall and F1 score after the enhancement of the EnlightenGAN algorithm were improved compared with the non enhanced algorithm, Zero_DCE, Adaptive_GAMMA and RUAS algorithms. All results indicated that the proposed method can effectively improve the detection precision under uneven lighting conditions and provide reference for the visual system of apple harvesting robot.

    參考文獻
    相似文獻
    引證文獻
引用本文

宋懷波,楊涵茹,蘇曉薇,周昱宏,高昕怡,尚鈺瑩,張姝瑾.基于EnlightenGAN圖像增強的自然場景下蘋果檢測方法[J].農(nóng)業(yè)機械學報,2024,55(8):266-279. SONG Huaibo, YANG Hanru, SU Xiaowei, ZHOU Yuhong, GAO Xinyi, SHANG Yuying, ZHANG Shujin. Application of Image Enhancement Technology Based on EnlightenGAN in Apple Detection in Natural Scenes[J]. Transactions of the Chinese Society for Agricultural Machinery,2024,55(8):266-279.

復制
分享
文章指標
  • 點擊次數(shù):
  • 下載次數(shù):
  • HTML閱讀次數(shù):
  • 引用次數(shù):
歷史
  • 收稿日期:2024-03-24
  • 最后修改日期:
  • 錄用日期:
  • 在線發(fā)布日期: 2024-08-10
  • 出版日期: