Syed Khasim, Asiya Begum Shaik Salma, Palakayala Anitha Rani, Vidya Lakshmi G V, Gorikapudi Sateesh
School of Computer Science and Engineering, VIT-AP University, Amaravati, Andhra Pradesh, India.
Department of Computer Science and Engineering (AI&ML), Lakireddy Bali Reddy College of Engineering, Mylavaram, Andhra Pradesh, India.
PLoS One. 2025 Aug 1;20(8):e0328349. doi: 10.1371/journal.pone.0328349. eCollection 2025.
Computer vision heavily relies on features, especially in image classification tasks using feature-based architectures. Dimensionality reduction techniques are employed to enhance computational performance by reducing the dimensionality of inner layers. Convolutional Neural Networks (CNNs), originally designed to recognize critical image components, now learn features across multiple layers. Bidirectional LSTM (BiLSTM) networks store data in both forward and backward directions, while traditional Long Short-Term Memory (LSTM) networks handle data in a specific order. This study proposes a computer vision system that integrates BiLSTM with CNN features for image categorization tasks. The system effectively reduces feature dimensionality using learned features, addressing the high dimensionality problem in leaf image data and enabling early, accurate disease identification. Utilizing CNNs for feature extraction and BiLSTM networks for temporal dependency capture, the method incorporates label information as constraints, leading to more discriminative features for disease classification. Tested on datasets of pepper and maize leaf images, the method achieved a 99.37% classification accuracy, outperforming existing dimensionality reduction techniques. This cost-effective approach can be integrated into precision agriculture systems, facilitating automated disease detection and monitoring, thereby enhancing crop yields and promoting sustainable farming practices. The proposed Efficient Labelled Feature Dimensionality Reduction utilizing CNN-BiLSTM (ELFDR-LDC-CNN-BiLSTM) model is compared to current models to show its effectiveness in reducing extracted features for leaf detection and classification tasks.
计算机视觉严重依赖特征,尤其是在使用基于特征的架构进行图像分类任务时。降维技术通过降低内层维度来提高计算性能。卷积神经网络(CNN)最初旨在识别关键图像组件,现在可以跨多层学习特征。双向长短期记忆(BiLSTM)网络以正向和反向两种方式存储数据,而传统的长短期记忆(LSTM)网络则按特定顺序处理数据。本研究提出了一种计算机视觉系统,该系统将BiLSTM与CNN特征集成用于图像分类任务。该系统利用学习到的特征有效地降低了特征维度,解决了叶片图像数据中的高维问题,并能够早期、准确地识别疾病。该方法利用CNN进行特征提取,利用BiLSTM网络捕捉时间依赖性,并将标签信息作为约束条件,从而产生更具判别力的疾病分类特征。在辣椒和玉米叶片图像数据集上进行测试,该方法实现了99.37%的分类准确率,优于现有的降维技术。这种经济高效的方法可以集成到精准农业系统中,便于自动疾病检测和监测,从而提高作物产量并促进可持续农业实践。将所提出的利用CNN-BiLSTM的高效标记特征降维(ELFDR-LDC-CNN-BiLSTM)模型与当前模型进行比较,以展示其在减少叶片检测和分类任务中提取的特征方面的有效性。