TY - EJOU AU - Rashid, Javed AU - Khan, Imran AU - Abbasi, Irshad Ahmed AU - Saeed, Muhammad Rizwan AU - Saddique, Mubbashar AU - Abbas, Mohamed TI - A Hybrid Deep Learning Approach to Classify the Plant Leaf Species T2 - Computers, Materials \& Continua PY - 2023 VL - 76 IS - 3 SN - 1546-2226 AB - Many plant species have a startling degree of morphological similarity, making it difficult to split and categorize them reliably. Unknown plant species can be challenging to classify and segment using deep learning. While using deep learning architectures has helped improve classification accuracy, the resulting models often need to be more flexible and require a large dataset to train. For the sake of taxonomy, this research proposes a hybrid method for categorizing guava, potato, and java plum leaves. Two new approaches are used to form the hybrid model suggested here. The guava, potato, and java plum plant species have been successfully segmented using the first model built on the MobileNetV2-UNET architecture. As a second model, we use a Plant Species Detection Stacking Ensemble Deep Learning Model (PSD-SE-DLM) to identify potatoes, java plums, and guava. The proposed models were trained using data collected in Punjab, Pakistan, consisting of images of healthy and sick leaves from guava, java plum, and potatoes. These datasets are known as PLSD and PLSSD. Accuracy levels of 99.84% and 96.38% were achieved for the suggested PSD-SE-DLM and MobileNetV2-UNET models, respectively. KW - Plant leaf species; stacking ensemble model; guava; potato; java plum; MobileNetV2-UNET; hybrid deep learning; segmentation DO - 10.32604/cmc.2023.040356