G., Kanojia, GaganKanojia, GaganG.S., Kumawat, SudhakarKumawat, SudhakarS.S., Raman, ShanmuganathanRaman, ShanmuganathanS.Babu, R.V.Prasanna, M.Namboodiri, V.P.2025-09-012025-09-019789819671748978981966461097830320088319789819671779978303194942597898196668749783031936968978303194120797898196696539783031961953186509371865092910.1007/978-981-15-8697-2_102-s2.0-85097296737https://www.scopus.com/inward/record.uri?eid=2-s2.0-85097296737&doi=10.1007%2F978-981-15-8697-2_10&partnerID=40&md5=75faed7d21365b842e3ceb8e302f0a0bhttp://repository.iitgn.ac.in/handle/IITG2025/29379Traditional 3D convolutions are computationally expensive, memory intensive, and due to large number of parameters, they often tend to overfit. On the other hand, 2D CNNs are less computationally expensive and less memory intensive than 3D CNNs and have shown remarkable results in applications like image classification and object recognition. However, in previous works, it has been observed that they are inferior to 3D CNNs when applied on a spatio-temporal input. In this work, we propose a convolutional block which extracts the spatial information by performing a 2D convolution and extracts the temporal information by exploiting temporal differences, i.e., the change in the spatial information at different time instances, using simple operations of shift, subtract and add without utilizing any trainable parameters. The proposed convolutional block has same number of parameters as of a 2D convolution kernel of size, and has n times lesser parameters than an 3D convolution kernel. We show that the 3D CNNs perform better when the 3D convolution kernels are replaced by the proposed convolutional blocks. We evaluate the proposed convolutional block on UCF101 and ModelNet datasets. All the codes and pretrained models are publicly available at https://github.com/GaganKanojia/SSA-ResNet. � 2020 Elsevier B.V., All rights reserved.EnglishComputer visionConvolutional neural networksObject recognition2-D convolutionConvolution kernelSimple operationSpatial informationsSpatio temporalTemporal differencesTemporal informationTime instancesConvolutionExploring Temporal Differences in 3D Convolutional Neural NetworksConference paperhttps://arxiv.org/pdf/1909.0330920200