This chapter proposes a hybrid method for classification of the objects based on deep neural network and a similarity-based search algorithm. The objects are pre-processed with external conditions. After pre-processing and training different deep learning networks with the object dataset, the authors compare the results to find the best model to improve the accuracy of the results based on the features of object images extracted from the feature vector layer of a neural network. RPFOREST (random projection forest) model is used to predict the approximate nearest images. ResNet50, InceptionV3, InceptionV4, and DenseNet169 models are trained with this dataset. A proposal for adaptive finetuning of the deep learning models by determining the number of layers required for finetuning with the help of the RPForest model is given, and this experiment is conducted using the Xception model.
Bin JiaKhanh PhamErik BlaschZhonghai WangDan ShenGenshe Chen
Erhan GündoğduAykut KoçA. Aydın Alatan
Andong MaAnthony M. FilippiZhangyang WangZhengcong Yin
Ahtsham ZafarAsad KhanArslan MajidMuhammad Shahzad YounisHammad M. Cheema
Seungyeon LeeEunji JoSangheum HwangGyeong Bok JungDohyun Kim