Impact
An attacker can trigger a heap buffer overflow in tf.raw_ops.QuantizedResizeBilinear
by manipulating input values so that float rounding results in off-by-one error in accessing image elements:
import tensorflow as tf
l = [256, 328, 361, 17, 361, 361, 361, 361, 361, 361, 361, 361, 361, 361, 384]
images = tf.constant(l, shape=[1, 1, 15, 1], dtype=tf.qint32)
size = tf.constant([12, 6], shape=[2], dtype=tf.int32)
min = tf.constant(80.22522735595703)
max = tf.constant(80.39215850830078)
tf.raw_ops.QuantizedResizeBilinear(images=images, size=size, min=min, max=max,
align_corners=True, half_pixel_centers=True)
This is because the implementation computes two integers (representing the upper and lower bounds for interpolation) by ceiling and flooring a floating point value:
const float in_f = std::floor(in);
interpolation->lower[i] = std::max(static_cast<int64>(in_f), static_cast<int64>(0));
interpolation->upper[i] = std::min(static_cast<int64>(std::ceil(in)), in_size - 1);
For some values of in
, interpolation->upper[i]
might be smaller than interpolation->lower[i]
. This is an issue if interpolation->upper[i]
is capped at in_size-1
as it means that interpolation->lower[i]
points outside of the image. Then, in the interpolation code, this would result in heap buffer overflow:
template <int RESOLUTION, typename T, typename T_SCALE, typename T_CALC>
inline void OutputLerpForChannels(const InterpolationCache<T_SCALE>& xs,
const int64 x, const T_SCALE ys_ilerp,
const int channels, const float min,
const float max, const T* ys_input_lower_ptr,
const T* ys_input_upper_ptr,
T* output_y_ptr) {
const int64 xs_lower = xs.lower[x];
...
for (int c = 0; c < channels; ++c) {
const T top_left = ys_input_lower_ptr[xs_lower + c];
...
}
}
For the other cases where interpolation->upper[i]
is smaller than interpolation->lower[i]
, we can set them to be equal without affecting the output.
Patches
We have patched the issue in GitHub commit f851613f8f0fb0c838d160ced13c134f778e3ce7.
The fix will be included in TensorFlow 2.5.0. We will also cherrypick this commit on TensorFlow 2.4.2, TensorFlow 2.3.3, TensorFlow 2.2.3 and TensorFlow 2.1.4, as these are also affected and still in supported range.
For more information
Please consult our security guide for more information regarding the security model and how to contact us with issues and questions.
Attribution
This vulnerability has been reported by Ying Wang and Yakun Zhang of Baidu X-Team.
References
Impact
An attacker can trigger a heap buffer overflow in
tf.raw_ops.QuantizedResizeBilinear
by manipulating input values so that float rounding results in off-by-one error in accessing image elements:This is because the implementation computes two integers (representing the upper and lower bounds for interpolation) by ceiling and flooring a floating point value:
For some values of
in
,interpolation->upper[i]
might be smaller thaninterpolation->lower[i]
. This is an issue ifinterpolation->upper[i]
is capped atin_size-1
as it means thatinterpolation->lower[i]
points outside of the image. Then, in the interpolation code, this would result in heap buffer overflow:For the other cases where
interpolation->upper[i]
is smaller thaninterpolation->lower[i]
, we can set them to be equal without affecting the output.Patches
We have patched the issue in GitHub commit f851613f8f0fb0c838d160ced13c134f778e3ce7.
The fix will be included in TensorFlow 2.5.0. We will also cherrypick this commit on TensorFlow 2.4.2, TensorFlow 2.3.3, TensorFlow 2.2.3 and TensorFlow 2.1.4, as these are also affected and still in supported range.
For more information
Please consult our security guide for more information regarding the security model and how to contact us with issues and questions.
Attribution
This vulnerability has been reported by Ying Wang and Yakun Zhang of Baidu X-Team.
References